GeoPard integration with UP42

GeoPard and UP42 are proud to announce technical partnership between the platforms.

 

GeoPard analytical blocks are now available at the UP42 GIS marketplace and include the following capabilities:

  • Integrated satellite constellations: Pleiades, Pleiades NEO, SPOT
  • Supported vegetation indices: NDVI, EVI, SAVI, NDWI
  • The output in COG format (Cloud Optimized GeoTIFF)

 

The integration will allow Up42 clients to get access to the advanced crop (without limitation to only crops) monitoring using GeoPard satellite imagery processing algorithms.

GeoPard analytical block is used to calculate NDWI on top of 30cm resolution Pleiades NEO.
GeoPard analytical block is used to calculate NDWI on top of 30cm resolution Pleiades NEO.

 

 

Dmitry Dementiev, GeoPard’s CEO: “Technical partnership with UP42 allows UP42 clients to use novel GeoPard’s geospatial analytics, including the processing of satellite images at high scale and unpreceded speed for such huge datasets. The analytical derivatives could be used for prescriptive precision agriculture, regenerative/ carbon farming, and high temporal and spatial crop monitoring.
It also indicates the ambition of GeoPard to be integrated with the most advanced technology platforms in the world .”

 

Earlier GeoPard team announced integration with JohnDeere (the biggest producer of agricultural machinery and equipment) via MyJohnDeere Operation center platform (the biggest by acres digital ag platform in the world), and Planet – a satellite imagery company with the biggest amount of satellites.

 

GeoPard Field Potential maps vs Yield data

GeoPard Field Potential maps very often look exactly like yield data.

We create them using multi-layer analytics of historical information, topography, and bare soil analysis.

The process of such synthetic Yield maps is automated (and patented) and it takes about 1 minute for any field in the world to generate it.

 

GeoPard Field Potential maps vs Yield data

Can be used as the basis for:

What are Field Potential maps?

Field potential maps, also known as yield potential maps or productivity potential maps, are visual representations of the spatial variability in potential crop yield or productivity within a field. These maps are created by analyzing various factors that influence crop growth, such as soil properties, topography, and historical yield data.

These maps can be used in precision agriculture to guide management decisions, such as variable-rate application of fertilizers, irrigation, and other inputs, as well as to identify areas that require specific attention or management practices.

Some key factors that are typically considered when creating field potential maps include:

  1. Soil properties: Soil characteristics such as texture, structure, organic matter content, and nutrient availability play a significant role in determining crop yield potential. By mapping soil properties across a field, farmers can identify areas of high or low productivity potential.
  2. Topography: Factors like elevation, slope, and aspect can influence crop growth and yield potential. For example, low-lying areas may be prone to waterlogging or have a higher risk of frost, while steep slopes may be more susceptible to erosion. Mapping these topographical features can help farmers understand how they affect productivity potential and adjust their management practices accordingly.
  3. Historical yield data: By analyzing historical yield data from previous years or seasons, farmers can identify trends and patterns in productivity across their fields. This information can be used to create these maps that highlight areas of consistently high or low yield potential.
  4. Remote sensing data: Satellite imagery, aerial photography, and other remote sensing data can be used to assess crop health, vigor, and growth stage. This information can be used to create these maps that reflect the spatial variability in crop productivity potential.
  5. Climate data: Climate variables such as temperature, precipitation, and solar radiation can also influence crop growth and yield potential. By incorporating climate data into these maps, farmers can better understand how environmental factors affect productivity potential in their fields.

They are valuable tools in precision agriculture, as they help farmers visualize the spatial variability in productivity potential within their fields. By using these maps to guide management decisions, farmers can optimize the use of resources, improve overall crop yields, and reduce the environmental impact of their agricultural operations.

Difference between Field Potential maps vs Yield data

Field potential maps and yield data are both used in precision agriculture to help farmers understand the spatial variability in their fields and make better-informed management decisions. However, there are some key differences between the two:

Data sources:

These maps are created by integrating data from various sources, such as soil properties, topography, historical yield data, remote sensing data, and climate data. However, this data is collected using yield monitors installed on harvesting equipment, which record the crop yield as it is harvested.

Temporal aspect:

These maps represent an estimation of the potential productivity of a field, which is generally static or changes slowly over time, barring significant changes in soil properties or other influencing factors. However, yield data is specific to a particular growing season or multiple seasons and can vary significantly from year to year based on factors like weather conditions, pest pressure, and management practices.

In summary, field potential maps and yield data are complementary tools in precision agriculture. These maps provide an estimate of the potential productivity of a field, helping farmers identify areas that may require different management practices. Yield data, on the other hand, documents the actual crop output and can be used to assess the effectiveness of management practices and inform future decision-making.

Vegetation Indices and Chlorophyll Content

GeoPard extends the family of supported chlorophyll-linked vegetation indices with

  • Canopy Chlorophyll Content Index (CCCI)
  • Modified Chlorophyll Absorption Ratio Index (MCARI)
  • Transformed Chlorophyll Absorption in Reflectance Index (TCARI)
  • ratio MCARI/OSAVI
  • ratio TCARI/OSAVI

They help to understand the current crop development stage including

  • identification of the areas with nutrient demand,
  • estimation of the nitrogen removal,
  • potential yield evaluation,

And the insights are used for precise Nitrogen Variable Rate Application maps creation.


Read More: Which index is the best to use in the precisionAg

Read More: GeoPard vegetation indices


Vegetation Indices and Chlorophyll ContentCanopy Chlorophyll Content Index (CCCI) vs Modified Chlorophyll Absorption Ratio Index (MCARI) vs Transformed Chlorophyll Absorption in Reflectance Index (TCARI) vs Ratio MCARI/OSAVI

What is Vegetation Indices?

Vegetation indices are numerical values derived from remotely sensed spectral data, such as satellite or aerial imagery, to quantify the density, health, and distribution of plant life on the Earth’s surface.

They are commonly used in remote sensing, agriculture, environmental monitoring, and land management applications to assess and monitor vegetation growth, productivity, and health.

These indices are calculated using the reflectance values of different wavelengths of light, particularly in the red, near-infrared (NIR), and sometimes other bands.

The reflectance properties of vegetation vary with different wavelengths of light, allowing for the differentiation between vegetation and other land cover types.

Vegetation typically has strong absorption in the red region and high reflectance in the NIR region due to chlorophyll and cell structure characteristics.

Some widely used vegetation indices include:

  • Normalized Difference Vegetation Index (NDVI): It is the most popular and widely used vegetation index, calculated as (NIR – Red) / (NIR + Red). NDVI values range from -1 to 1, with higher values indicating healthier and denser vegetation.
  • Enhanced Vegetation Index (EVI): This index improves upon NDVI by reducing atmospheric and soil noise, as well as correcting for canopy background signals. It uses additional bands, such as blue, and incorporates coefficients to minimize these effects.
  • Soil-Adjusted Vegetation Index (SAVI): SAVI is designed to minimize the influence of soil brightness on the vegetation index. It introduces a soil brightness correction factor, enabling more accurate vegetation assessments in areas with sparse or low vegetation cover.
  • Green-Red Vegetation Index (GRVI): GRVI is another simple ratio index that uses the green and red bands to assess vegetation health. It is calculated as (Green – Red) / (Green + Red).

These indices, among others, are used by researchers, land managers, and policymakers to make informed decisions regarding land use, agriculture, forestry, natural resource management, and environmental monitoring.

Normalized Difference Moisture Index

The number of vegetation indices supported by GeoPard is continuously growing. GeoPard team introduces the Normalized Difference Moisture Index (NDMI). The index determines vegetation water content and normalized difference water index (NDWI). It is useful for finding the spots with existing water stress in plants.

Lower NDMI values mark the spots where the plants are under stress from insufficient moisture.
On the other side, lower normalized difference water index values following the vegetation peak highlight the spots that are becoming ready for harvesting first.

The difference of the vegetation relative water content between two satellite images (Sentinel-2 constellation in this case)

The difference of the vegetation relative water content between two satellite images (Sentinel-2 constellation in this case)

In the following screenshots, you can find the NDMI zones generated based on June 19 (vegetation peak) and July 6 satellite images and the equation map representing the NDMI difference.

Normalized Difference Moisture Index calculated on top of Planet / Sentinel-2 / Landsat imageNDMI calculated on top of Planet / Sentinel-2 / Landsat image

What is Moisture Index?

It is a measure or calculation used to assess the moisture content or availability in a specific area or region. It is typically derived from various environmental factors such as precipitation, evapotranspiration, soil properties, and vegetation cover.

It provides a relative indication of the wetness or dryness of an area, helping to identify potential water stress or drought conditions.

It is a valuable tool for monitoring and managing water resources, agricultural planning, and understanding the ecological conditions of a particular region.

What is Normalized Difference Moisture Index?

Normalized Difference Moisture Index (NDMI) is a vegetation index derived from remote sensing data to assess and monitor the moisture content of vegetation. Like other vegetation indices, it is computed using spectral reflectance values from satellite or aerial imagery.

It is particularly useful in monitoring plant water stress, assessing drought conditions, estimating fire risk, and studying the impacts of climate change on vegetation.

It is calculated using the Near-Infrared (NIR) and Shortwave Infrared (SWIR) bands, which are sensitive to the moisture content in vegetation. The formula for NDMI is:

NDMI = (NIR – SWIR) / (NIR + SWIR)

NDWI values typically range from -1 to 1, with higher values indicating higher vegetation moisture content and lower values indicating lower moisture content or water stress in the vegetation. Negative NDMI values can be associated with non-vegetated areas or areas with very low moisture content.

What is NDWI?

NDWI, or Normalized Difference Water Index, is a remote sensing index used to quantify and assess water content or water-related features in vegetation or landscapes.

It is calculated by analyzing the reflectance of near-infrared and green light bands from satellite or aerial imagery. It is particularly useful for identifying water bodies, monitoring changes in water availability, and assessing vegetation health.

By comparing the absorption and reflection of different wavelengths, it provides valuable information for applications such as drought monitoring, hydrological analysis, and ecosystem management.

Visualization of NDMI to Determine Normalized Difference Water Index

Visualizing the NDMI involves processing satellite or aerial imagery, calculating the NDMI values, and then displaying the results as a color-coded map or image. Here are the general steps to visualize NDMI:

  • Acquire satellite or aerial imagery: Obtain multispectral imagery from a satellite or aerial platform, such as Landsat, Sentinel, or MODIS. Ensure that the imagery includes the necessary bands: Near-Infrared (NIR) and Shortwave Infrared (SWIR).
  • Pre-process the imagery: Depending on the data source, you may need to preprocess the imagery to correct for atmospheric, geometric, and radiometric distortions. Convert the digital numbers (DN) in the image to spectral reflectance values.
  • Calculate NDMI: For each pixel in the image, use the NIR and SWIR reflectance values to compute the NDMI using the formula: NDMI = (NIR – SWIR) / (NIR + SWIR).
  • Color mapping: Assign a color palette to the NDMI values. Typically, a continuous color scale is used, ranging from one color (e.g., red) for low NDMI values (indicating low moisture content) to another color (e.g., green) for high NDMI values (indicating high moisture content). You can use software like QGIS, ArcGIS, or programming libraries like Python’s Rasterio and Matplotlib to create a color map.
  • Visualize the NDMI map: Display the NDMI map or image using GIS software, a programming library, or an online platform. This will allow you to analyze the spatial distribution of vegetation moisture content and identify areas of water stress or high moisture.
  • Interpretation and analysis: Use the NDWI visualization to assess vegetation health, monitor drought conditions, or evaluate fire risk. You can also compare normalized difference water index maps from different time periods to analyze changes in vegetation moisture content over time.

Remember that different software tools or programming libraries may have slightly different workflows, but the overall process will be similar. Additionally, you can overlay other data layers, such as land use, elevation, or administrative boundaries, to enhance your analysis and better understand the relationships between vegetation moisture content and other factors. 

Automated Crop Scouting with Intersection of Data Layers

In GeoPard we have a module to create crop data scouting zones Automatically using flexible configuration of business and agronomic logic.

It allows to control huge amount of fields and do scouting only when emergency case happened.

Business/agronomic logic could be flexible. In this example – Tasks are created in the areas where we have High Historical Field Potential Zones and Low vegetation on the latest satellite imagery.

An example of another use-case: Low Yield zone (from yield file) Intersected with Low pH zones – to adjust lime fertility levels.

 

Automated Crop data Scouting zones with the Intersection of Data Layers
High Historical Field Productivity zones intersected with the latest Planet image low vegetation Zones -> Scouting tasks are created automatically in GeoPard

For crop trading companies and data modelers intersection between Historically most stable and High yield zones could be a good indicator to extrapolate Yield predictions.

If you’re a farmer, agronomist, or precision agriculture specialist, you know the importance of crop data scouting. It’s essential for monitoring the health of your crops and identifying any potential issues before they become major problems.

However, traditional crop scouting can be time-consuming and labor-intensive. That’s where automated scouting tasks come in.

GeoPard is a revolutionary automated precision agriculture software that uses advanced algorithms and satellite imagery to automatically monitor your crops. With GeoPard, you can easily set up automated scouting tasks that will alert you to any potential issues, such as pests, diseases, or nutrient deficiencies.

One of the key benefits of using automated scouting tasks is the ability to quickly and accurately identify issues in your crops. GeoPard uses advanced algorithms to analyze the satellite imagery of your fields, detecting even the smallest changes in your crops.

This means you can quickly identify any potential problems and take action to address them before they become more serious.

Another advantage of automated scouting tasks is the ability to monitor your crops on a regular basis. With traditional scouting, it can be difficult to regularly visit your fields and check for potential issues.

But with GeoPard, you can set up automated tasks that will monitor your crops on a daily or weekly basis, giving you a more comprehensive view of their health.

GeoPard’s automated scouting tasks are also customizable, allowing you to tailor them to your specific needs. You can set up tasks to monitor for specific issues, such as pests or diseases, or set up tasks to monitor specific areas of your field. This means you can get the information you need to make informed decisions about your crops.

In addition to its automated scouting tasks, GeoPard also offers a range of other features that can help you manage your precision agriculture operations. You can use GeoPard to plan your planting and fertilization, monitor soil moisture levels, and track your yield.

Overall, GeoPard’s automated scouting tasks are a powerful tool for farmers, agronomists, and precision agriculture specialists. With GeoPard, you can quickly and easily monitor your crops and identify potential issues, helping you make better decisions about your operations.

What is Crop Scouting?

Crop scouting is a practice in agriculture that involves systematically inspecting and monitoring crops to assess their health, growth, and potential issues. It typically involves physically walking through fields or utilizing technology such as drones or sensors to gather data.

Crop scouts observe and collect information on factors like pest infestations, disease outbreaks, nutrient deficiencies, and weed pressure.

This data helps farmers make informed decisions regarding crop management, such as implementing targeted treatments, adjusting fertilizer applications, or implementing pest control strategies. It plays a crucial role in maximizing crop yields and ensuring overall crop health.

What is Automated Crop Data Scouting?

Automated crop scouting refers to the application of cutting-edge technologies, including robotics, unmanned aerial vehicles (UAVs), various sensors, and artificial intelligence (AI), to observe and evaluate crop health and development in an agricultural environment.

The goal is to enhance effectiveness, lower expenses, and streamline crop management by automating tasks traditionally performed by human crop scouts.

The process of automated crop data scouting entails several stages, such as:

  • Gathering data: UAVs or terrestrial robots fitted with a range of sensors (e.g., cameras, multispectral sensors, LIDAR) acquire information on crop conditions, encompassing plant health, pest and disease occurrence, soil properties, and nutrient concentrations.
  • Analyzing data: The gathered data is subsequently processed and examined using AI and machine learning algorithms to detect patterns, irregularities, and tendencies related to crop health and development.
  • Making decisions: The data analysis results can be utilized to make informed choices about crop management, including optimizing watering, fertilization, pest management, and other interventions.
  • Taking action: Farmers can implement targeted measures based on the knowledge acquired from automated crop monitoring to address specific problems in the field, such as applying pesticides or nutrients solely where required, minimizing waste and environmental impact.

By providing farmers with real-time, accurate data, it can significantly enhance agricultural productivity and sustainability, allowing for better decision-making and the implementation of more precise management techniques.

How to Identify Scouting Zone?

Determining crop data scouting zones involve dividing a farm field into smaller, manageable sections based on aspects such as soil composition, terrain, historical crop outcomes, or other pertinent factors.

The objective is to establish uniform areas representing similar conditions, enabling more focused scouting, observation, and management practices. Here’s a step-by-step method to pinpoint crop scouting zone:

  • Collect historical information: Compile data on previous crop yields, soil analysis results, occurrences of pests and diseases, and any other significant information for the field. This data can help recognize areas with comparable conditions or performance.
  • Examine soil composition and terrain: Investigate the soil types and terrain of your field to comprehend natural variations. Different soil compositions and elevation levels can influence crop growth, nutrient absorption, and water accessibility, which in turn affects crop health.
  • Utilize remote sensing technology: Use satellite or drone-based imagery to obtain additional details on field conditions, such as vegetation indices, soil moisture levels, and temperature variations. This information can help fine-tune scouting zones by providing a more comprehensive view of the field.
  • Implement precision agriculture techniques: Use precision agriculture software to process and analyze the gathered data. These tools can help identify patterns and establish data-driven scouting areas, considering factors like crop health, soil variability, and terrain.
  • Establish scouting areas: Based on the data analysis, segment the field into smaller, uniform areas that display similar traits. These areas should be manageable in size and adapted to the specific requirements of your operation.
  • Update and adjust regularly: As circumstances change and new data becomes available, reassess and modify the scouting areas to ensure they remain relevant and precise. This may involve updating the areas based on new yield data, occurrences of pests and diseases, or other factors that influence crop performance.

Hence, by pinpointing and creating crop scouting zone, farmers can concentrate their monitoring efforts more efficiently and apply targeted management practices, resulting in better resource usage and improved crop health.

Crop yield prediction with remote sensing data in Precision Agriculture

For crop yield prediction, we need to understand how much sunlight plants receive and how much water they need. Plant growth depends on these two factors, but many other factors affect plant growth such as temperature, humidity, and soil type.

The quantity and quality of crops produced in the world is a major factor affecting food security. This is especially important in developing countries where agriculture is still an important part of the economy.

Remote sensing data can be used to estimate quantities of light received by plants and thus predict crop yield. Remote sensing data is a powerful tool for estimating crop yield. It provides information on the growing crops and their environment, allowing you to estimate crop production.

Remote sensing data is a form of data analytics in agriculture that can be used to predict yield before the harvest. This article explores everything you need to know about remote sensing data.

What is crop yield data in agriculture?

Crop yield data is information on the amount of crop produced by a farmer or farmer group. It includes the amount of crop harvested per hectare of land. This can be measured in tonnes, bushels, or any other unit of measurement depending on the crop.

Farm Yield data is important when it comes to agriculture because it can help farmers determine how much they should plant next season. In addition, yield data allows them to determine if there’s a problem with their crops that needs to be addressed.

Yield data can also be used to monitor progress toward global goals set by governments, non-governmental organizations, and other stakeholders.

In addition, yield data is used to identify strengths and weaknesses in farming practices and make recommendations based on this information. Yield data is useful in making informed decisions about many aspects of farming, such as:

Data analytics in precision agriculture

Seed selection: Choosing varieties and hybrids based on yield data can help ensure that fields are planted with the most profitable seeds available.

Pest management: By monitoring plant growth, yield data can help farmers determine when to introduce pest control measures. This can reduce the use of pesticides and increase profits.

Irrigation scheduling: Using information from yield monitors allows farmers to fine-tune irrigation scheduling, which helps conserve water and money while maintaining high yields.

What is remote sensing data?

Remote sensing is the science of acquiring information about an object or phenomenon without being in direct contact with the object and thus in a non-intrusive manner. It is used in agriculture to monitor crops, soil, and moisture conditions.

Remote sensing uses electromagnetic radiation (EMR) emissions such as those emitted by radio waves, microwaves, infrared, visible light, and ultraviolet light.

Remote sensing of crops provides a way to measure crop growth conditions over time. It also provides information on the state of crops at specific points in time and space. This information can be used to estimate crop yields and provide estimates of when the harvest should occur.

Remotely sensed data can be used to measure land-use changes, monitor crop growth, and farm yield, detect soil moisture and salinity levels, determine pest infestation levels, monitor environmental pollution levels, etc.

So, for example, if you’re walking through a field and looking at the plants, you’re collecting data about them. If you’re driving around in a helicopter or plane and looking at the plants from above, you’re collecting remote sensing data.

There are many different types of remote sensing techniques and devices used to collect this data: satellite images, aerial photos, radar systems, lidar, and more.

What is crop yield prediction?

Crop yield prediction is the process of estimating the potential or expected yield of a specific crop for a given area and growing season.

It involves analyzing various factors such as weather conditions, soil characteristics, crop genetics, and management practices to make informed predictions about the likely harvest.

It is important to note that crop yield predictions are subject to uncertainty due to the complexity of agricultural systems and the influence of unpredictable factors like pests, diseases, and extreme weather events.

While prediction models provide valuable insights, they serve as a tool to aid decision-making rather than providing absolute certainty.

How does it work?

The following data sources are combined to create a varied weighting on yield projection numbers based on the present cropping season circumstances in various regions.

Farmers Edge data scientists combine these data sources with the most recent advances in machine learning to update yield forecast estimates whenever a major yield component is disrupted.

1. Preseason data

Preseason data must be accurate to lay the groundwork for crop yield prediction. This information is available before the crop is planted, and it lays the stage for the first yield prediction readings.

Data such as a field’s location, current and previous crops, field-specific weather months before planting or seeding, soil test information and data, and regional weather trends over the last decade are all combined to provide insight into how to start the season with accurate yield numbers to anticipate.

2. In-season data

In-season data provides insight into variables that affect farm yield throughout the growing season after the foundation has been laid.

Farmers Edge on-farm weather stations give field-centric data that enhances these datasets by delivering expected and predicted values that are stored and then reset when data comes in each day, advancing the models.

Other in-season data, like fertilizer application, is also taken into account during the season, whether planned or not, to improve field diagnostics and offer forecast yield values.

3. Crop-specific data

Farmers Edge’s wide network of local agronomists may also provide crop-specific data during the growing season.

Farmers Edge agronomists have identified crop-specific data that impacts yield during a growing season, including water content during major growth stages or hours above cardinal temperatures for crops during key yield determining periods, for the five main crops in yield prediction (corn, canola, lentils, soybeans, and wheat).

4. Crop and field imagery

High-resolution satellite imagery is used to set NDVI crop health values on fields fast and precisely, allowing researchers to look for erroneous results or regional concerns with crops that could affect yield.

These regional trends can be used to determine if areas are on track for forecast or whether environmental factors have distorted the crop yield prediction values.

5. Histogram data

Farmers Edge Yield Prediction models use big statistics to find different distributions in field images over time, which then offers clarity to a convolutional neural network that can use these modifications to forecast yield across large areas, such as the United States or Canada, as imagery changes over time.

What is remote sensing data in agriculture?

It’s not simple to anticipate production before the harvester runs through the field, but the Farmers Edge team is thrilled to provide producers with farm yield predictions based on complete and accurate statistics.

Each data source has a weight in crop yield prediction, which can be changed based on the model parameters.

How to increase farm yield with precision technologies?

Farm owners have debated and worked on raising agricultural yields for generations. Some of the methods discovered were effective, while others were ineffective.

In addition to the invaluable experience of earlier generations of farmers, the agriculture industry may now profit from modern scientific and technological advancements.

Let’s take a look at the most common ways for farmers to boost yields and how previous experience and new technology can be utilized to boost agricultural productivity.

1. Proper irrigation

Farmers that want to boost their average crop output per acre on their farms need a well-designed irrigation system. Providing the right amount of water to the plants has a direct impact on their development and, as a result, agricultural yields.

Weather forecasts are crucial for effective irrigation of farmlands. Hyper-local weather forecasting is now possible thanks to today’s technologies, which include customized programs and software for farmers.

It makes precision irrigation possible by allowing farmers to prepare ahead of time and schedule irrigation of their crops most exactly and efficiently possible.

2. Soil testing and its quality

One of the most important factors affecting crop yields is soil quality or fertility. Aside from agricultural production, soil quality has an impact on how much it costs a farmer to cultivate a certain plant, as some of them require specific ratios of specific elements in the soil, such as mineral particles, organic matter, water, and air.

Farmers must regularly monitor soil conditions on their land plots to achieve higher agricultural yields. Crop rotation is one of the most effective techniques to keep the soil healthy, among other things.

Plant rotation on a specific field plot avoids soil fatigue and interrupts insect cycles, resulting in higher agricultural output and, as a result, higher average farm yield per acre.

3. Quality of seeds

The quality of seeds used by farmers to sow their fields has an impact on agricultural production. As a result, agrarians are advised to sow only certified seeds that have passed all necessary quality controls on their farmlands to increase agricultural yield.

Certified seeds may be more expensive than uncertified seeds, but the result will be worth it because seed quality is one of the most important elements affecting crop productivity.

Aside from that, using only high-quality seeds is one of the most environmentally responsible ways to boost crop productivity. A farmer can examine the quality of specific seeds by contacting a relevant seed business and arranging customized trials on a specific parcel of land if necessary.

Aside from that, it’s crucial to understand that seed quality isn’t permanent or unaffected. From the moment they are sown in the earth, seed grains require protection. One of the seed treatment strategies used to achieve this is seed coating.

It is the technique of encasing seed grains in exterior materials to improve their properties (weight, size) and/or providing them with active chemicals (micronutrients, microbial inoculants, growth regulators, and so on) to protect them from plant diseases and enhance their growth.

4. Smart application of fertilizers

Fertilizers are designed to nourish different types of soil, enhance plant growth, and increase harvests, but their use should be balanced and judicious. Overuse of fertilizers can have a severe impact on soil quality and, as a result, agricultural productivity.

Various regions of a field may require different levels of soil fertilization, so the best approach is to use fertilizers selectively, according to the demands of different field zones. This precise approach to field fertilizing keeps the soil healthy, resulting in higher average yields per acre.

A Crop Monitoring software is one of the technology options in this context. It contains a field zoning tool that separates farmland into 2-7 zones based on satellite photography, identifying places that require more attention than others.

Growers frequently employ precision technology as one of the most environmentally friendly ways to boost it.

5. Crop protection methods

Agriculturists who want to boost yields must look after their plants throughout their growth and until the end of the growing season. Farmers use a variety of compounds to reduce the influence of weeds, pests, and diseases on crop productivity, depending on the situation.

Herbicides, insecticides, desiccants, plant growth regulators, fungicides, adjuvants, and other chemicals are common examples. Crop protection can be done in a variety of ways. Weed/pest control and plant disease control are two of the most important.

6. Plant disease prevention and management

Plant infections are another significant hazard to a grower’s agricultural performance. Farmers can use a variety of plant disease prevention and management methods, like choosing disease-resistant or disease tolerant varieties, treating seeds with fungicides, and applying pesticides and other similar substances to developing plants, depending on the type of plants to be grown on a field.

Agrarians should pay extra attention to when they use these or other tactics so that they have the most impact. It’s necessary to keep in mind that timely plant protection is critical for the farm yield per acre indication — the earlier a problem is recognized, the faster and easier it will be resolved, and the lesser fields acres will be impacted.

7. Weed and pest management

During the growing season, farmers’ primary challenges are weed control and pest management. A single weed, for example, can produce over 10 million weed seeds, which, if not controlled promptly, can significantly reduce yields on a given field and cause difficulties for years. Agrarians must also take a holistic response to pest infestations.

Farmers must constantly be ready to respond to pest infestation issues promptly because pests are highly adaptive and fast-reproducing organisms that might jeopardize the produce on specific farmland.

Crop yield prediction is a major concern for farmers as it directly affects their profit margin. If a farmer knows how much yield he can expect from his land, he can plan his crops accordingly and increase his profit margin. This is why it is important to predict farm yield accurately before planting any crop on a particular land.

Crop yield prediction with GeoPard Agriculture Tools

It has been an important issue in agronomy since ancient times. It is critical to food security, especially at times of drought, floods, or other natural disasters.

Crop yield prediction is also used by farmers to make decisions about when to plant and harvest crops based on soil moisture content, pest infestations, and other factors such as weather conditions and fertilizer requirements.

To make more informed decisions and improve growing efficiency with Farm Yield Data, click here to request a demo now.


Frequently Asked Questions


1. How do farmers increase their crop yield?

Farmers increase crop yield through soil management, efficient irrigation, crop rotation, and pest and weed control. These practices optimize soil fertility, water availability, and minimize pests and diseases, resulting in higher crop productivity.

2. How to calculate crop yield per hectare/plot?

It can be measured through various methods and factors. One common approach is to physically harvest a representative sample of the crop from a given area and weigh it. This weight is then extrapolated to estimate the total yield of the entire field or farm.

For example, if the sample weighs 100 kilograms and the field area is 2 hectares, the crop yield per hectare would be 50 kilograms.

Additionally, advanced technologies such as remote sensing and satellite imagery can be used to assess crop health, vegetation indices, and biomass, providing valuable insights.

Other factors like grain quality, size, and market value are also taken into account when measuring it. For example, if the sample weighs 100 kilograms and the field area is 2 hectares, the crop yield per hectare would be 50 kilograms.

3. How do you estimate the crop yield prior to harvest?

Estimating crop yield prior to harvest can be done through a combination of methods.

One approach is using crop-specific growth models that take into account factors such as planting date, weather conditions, and crop health to predict potential yield. A

Another method is using remote sensing techniques, such as satellite imagery or drones, to assess crop vigor and biomass.

4. Which type of farming system yields healthier grains?

Organic farming systems are often associated with healthier grains. Organic farming avoids the use of synthetic pesticides, herbicides, and genetically modified organisms (GMOs). Instead, organic farmers rely on natural fertilizers, crop rotation, and biological pest control methods.

These practices contribute to the production of grains that are free from chemical residues, potentially higher in essential nutrients, and have lower levels of pesticide contamination.

However, it’s important to note that the specific health benefits of grains can vary depending on factors such as soil quality, crop variety, and post-harvest handling practices.

5. How does pesticides increase crop yield?

Pesticides can increase it by protecting plants from various pests, diseases, and weeds. They help control or eliminate harmful insects, fungi, bacteria, and other organisms that can damage or destroy crops.

By reducing the impact of pests, pesticides allow plants to grow more vigorously, utilize nutrients efficiently, and allocate more resources towards productive growth. \

Remote crop monitoring system: How does it work?

A remote crop monitoring system in precision agriculture refers to the use of various technologies and tools to monitor and manage crops from a distance. This approach leverages data collection, analysis, and communication technologies to make informed decisions about crop health, irrigation, fertilization, and overall farm management.

Farming is not left behind in the 21st century where everything is going digital. As you read this article, several farmers spread across the globe are already using tech to perform several tasks in their fields such as monitoring plant humidity, soil conditions, general health, temperatures, and even many more the use of sensors.

By embracing technology, farmers are enjoying the benefits of having accurate statistics as compared to the old days when they used guesses works and intuitions to make choices. This helps them in making better judgments that result in increased harvests.

What is crop monitoring system?

Crop monitoring refers to the process of systematically observing, assessing, and collecting data about crops throughout their growth cycle.

It involves regular and systematic observation of crops to gather information about their health, growth, and development.

Its goal is to make informed decisions regarding crop management practices, optimize resource utilization, and maximize yields. It typically involves the following activities:

  • Visual Inspection
  • Phenological Observations
  • Soil Monitoring
  • Weather Monitoring
  • Sensor-Based Monitoring
  • Data Analysis

By monitoring crops, farmers can proactively address problems, optimize resource allocation, and make informed decisions to improve overall crop health, yield, and profitability. It is an essential component of precision agriculture, enabling farmers to practice targeted and sustainable crop management.

Smart crop monitoring system: How does it work?

Its main goal is to ensure that farming becomes easier and more profitable as compared to traditional methods. From displaying data about the fields all the way to weather forecasts, below is all that you may want to know about remote crop monitoring and related topics.

A smart crop monitoring system incorporates various technologies to collect, analyze, and utilize data for efficient crop management. Here’s a breakdown of how it typically works:

1. Sensor Deployment

The system begins by deploying sensors in the field. These sensors can measure parameters such as soil moisture, temperature, humidity, nutrient levels, and light intensity.

They may also include weather sensors to capture data on rainfall, wind speed, and solar radiation. The sensors are strategically placed throughout the field to gather representative data.

2. Data Collection

The deployed sensors continuously collect data from the field. This can be done using wired or wireless connections.

Wireless sensors are commonly used as they provide flexibility and ease of deployment. The collected data is sent to a central system for further processing and analysis.

3. Data Transmission

Wireless sensors transmit the collected data to a central hub or gateway. This can be done using various wireless communication technologies such as cellular networks, Wi-Fi, or dedicated radio systems. The data transmission can be in real-time or at regular intervals depending on the system’s configuration.

4. Data Storage and Processing

The collected data is stored in a database for further analysis. Advanced data processing techniques, including machine learning algorithms and statistical models, are applied to the data to extract meaningful insights and patterns. This analysis helps identify correlations, trends, and anomalies in the crop conditions.

5. Decision Support and Alerts

Based on the analyzed data, the system provides decision support to farmers or agronomists. It generates alerts and notifications regarding critical events, such as soil moisture levels dropping below a threshold or the presence of pests or diseases.

These alerts are delivered through web-based dashboards, mobile applications, or email/SMS notifications, enabling timely interventions.

6. Visualization and Reporting

The system presents the analyzed data in a user-friendly manner through visualizations and reports. Graphs, charts, and maps are often used to convey information about crop health, growth patterns, and environmental conditions. This helps farmers interpret the data easily and make informed decisions.

7. Automation and Control

In some cases, it can be integrated with automated irrigation systems, fertigation systems, or machinery.

Based on the collected data and analysis, the system can automatically control irrigation schedules, adjust nutrient application rates, or activate pest management measures.

This integration allows for real-time, data-driven decision-making and precise control over crop management practices.

The ultimate goal of a smart crop monitoring system is to optimize resource utilization, improve crop productivity, and reduce costs by providing farmers with accurate and timely information for decision-making. By leveraging technology, such systems enable more efficient and sustainable crop management practices in modern agriculture.

The importance of a remote crop monitoring system

Among the most important tasks that are always done for good yields is the monitoring of crops. Since plants are constantly monitored, it ensures that they grow in the best conditions, and in case of any anomalies, it is corrected on time hence reducing the devastating impending impact.

As a farmer or agriculture enthusiast, it is worth noting that it is currently a must-do for one to expect better massive harvests and those that are of higher quality since most of the drawbacks are settled early enough.

Since monitoring crops is one of the pillar requirements for a good harvest, one needs to go for special training. Special training doesn’t mean one needs to hold a master’s or bachelor’s degree but only needs to understand how to coordinate, monitor and even weigh the obtained results. Through this, you will be able to make better decisions based on accurate diagnosis and later best quality yields.

When choosing to monitor your crops, you need to know that apart from prevention of infestations and spread of pests, diseases and even weeds are always under control hence no devastating effects that lower the performance and even the quality of the final products.

Are you aware that crops are always exposed to strange threats yearly due to mutations and transformations in the biological components of the pests hence usually choosing one similar method of treating them means you are mistaken and need to change tactics every time?

For that reason, monitoring crops is perceived as a serious task that needs more responsibility and one that should not be degraded.

Whenever one is monitoring fruit crops such as pears and even apples, when using an Integrated Pest Management Programme, it is advisable not only to track changes in trees but also to check on the weather in the area that affects them.

This enables you to have a list of possible pests that may pose a threat to the growth of trees. Using systematic visual monitoring of the orchard block will work whenever you want to reduce the cost and your time from planting season to the harvesting season.

Climate and pests

The questionable part when analyzing the influence of climate is simply that some pests can feed on it and later be toxic to agents to crops so fast. Basically in agriculture, many farmers always lack awareness hence noticing when it is too late when their crops are already massively infested by pests.

The better part of this is that pests always do react predictably to the climate hence a perfect strategy can be hatched to avoid another pest attack and also prevent them in the future.

Despite monitoring being done more frequently, vegetable and fruit farmers always get to know the presence of pests or any threat a little late. This shows how important it is to monitor climatic factors that eventually turn out to be earlier signs of the emergence and pest infestation.

Block crop monitoring

Many ways can be used to monitor crops, and one of them is through visual monitoring using blocks that enable you to analyze trees that have similar characteristics based on their variety, age, and, even physical condition.

The idea behind visual monitoring is to have blocks that act as signs and those that can be studied like they were a unit and not separately since it is a way that is used by several farmers across the globe and that horticultural experts always have limited time for them to review each of the blocks arranged in the field.

importance of a remote crop monitoring system

Certain attention needs to be paid during the selection of the most appropriate block. This is because the block that is chosen needs to have all the history of the pests so that the best treatment and prevention can be applied to protect the growth of other trees.

You do not have to have large equipment, tools, and even complex methods to monitor your crops. One of the best ways to go is simply to do a meticulous and extensive visual examination that enables you to notice the different types of pests present in the trees.

This can be always completed using a common lens, however, experts will always use more complex equipment such as a binocular microscope. This enables them to count and even identify mites and thrips.

Temperature of crops

For one to accurately measure the temperature when monitoring crops, he or she can choose to use a simple thermometer after finding out about simple information. Besides that, you may also choose to use a maximum to a minimum thermometer that is very common among rural suppliers and record extra information.

It is also worth noting that the thermometer needs to be placed on the orchard and ensure that it is not exposed to direct sunlight. You may also add a data logger to record more accurate weather information.

For data loggers, you may also choose to use those that have the potential of measuring the temperature, rain, humidity, and even the humidity of the leaves.

For you to put aside trees that will not be studied with those in the blocks that will act as indicators, for you to be able to differentiate them, you simply need to mark them using acrylic paint or even adhesive tape.

Application of an Integrated Pest Management vouches for selecting and marking flowers, buds, and fruits randomly to monitor each one of the trees.

After about the duration of one to two weeks, at the time that the fruit is developing, farmers need to spend ten to twenty minutes for every two and a half acres strictly managing the fruits, flowers, and buds that are marked searching for any signs that may show the presence of one or even more pests in the crop.

Whenever a pest is found in the crops, it needs to be recorded fast and also in a detailed way in the log made exactly for this kind of data.

Conclusion

All our expert team of agronomists are professionals in a range of branches of agriculture and are also capable of providing monitoring services through merging field visits with quantitative and qualitative assessment and agriculture remote crop monitoring system.

All these innovative systems are assessments that are focused on a wide range of activities that carefully monitor crop developments, gathering data and information that is related to the area.

This data is then carefully analyzed by our professional team and then noted in a final report that enables them to mention and evaluate major factors and factors that are capable of affecting the productivity of the crops.

Based on these results GeoPard is then able to give you an estimated time for harvesting, and also crop yield. This enables clients to smoothly monitor their crops through the recent satellite imagery. Weight data layers in a given place without using a given facility.

Types Of Remote Sensing in Agriculture

There has been an increase in the utilization of advanced tech type systems like remote sensing in agriculture recently. Agricultural practices today are significantly more effective, coherent, and streamlined in contrast with conventional agrarian practices.

The use of advanced methods, for instance, crop yield estimation in all aspects of the cultivating process can produce an ideal yield and a better harvest.

To guarantee a higher yield, farmers need to ensure the best health of their crops. While the use of customary systems restricted the observation of bigger regions, as the farmers were relied upon to physically visit all parts of the land.

The most recent innovation has given an assortment of ways through which farmers can without much of a stretch screen the quality of crops in bigger regions.

What is remote sensing?

Define: Remote sensing is a field of study and technology that involves gathering information about the Earth’s surface or other objects from a distance. It utilizes various devices and sensors, such as satellites, airplanes, and drones, to collect data without making physical contact with the target.

Simply, it involves the checking of land from advanced equipment from far distances. The checking includes the physical characteristics of a piece of land.

The process works by estimating the produced and reflected radiation from the land, which helps structure a picture of the land and assists specialists with passing judgment on specific parts of the land.

These electromagnetic waves include visible light, infrared, and microwave radiation. By analyzing the characteristics of the radiation, it enables scientists to extract valuable information about the Earth’s features and processes.

It has a wide range of applications across various disciplines, including environmental monitoring, agriculture, urban planning, and disaster management. It provides a means to observe and study large areas of the Earth’s surface, which would be challenging or impossible to access directly.

What is Remote Sensing used for?

To augment crop development and increase yield in a tough market, producers tend to exploit the most recent tech accessible. To guarantee the greatest yield, farmers need the harvests to remain in the most ideal health.

Observing the strength of harvests over a huge region becomes significantly simpler with the utilization of remote sensing in agriculture.

The data gathered from the process supports precision growing, empowering farmers to accomplish higher yields from their harvests. Some common remote sensing applications include:

  • Land cover and land use mapping: It can identify and classify different types of land cover, such as forests, crops, water bodies, and urban areas. This information helps in monitoring changes in land use, assessing deforestation, managing natural resources, and planning urban development.
  • Environmental monitoring: It allows for the observation and analysis of environmental parameters like vegetation health, water quality, air pollution, and climate change indicators. It aids in monitoring and understanding natural phenomena, such as wildfires, droughts, and the melting of polar ice caps.
  • Agriculture and crop management: Agricultural remote sensing can assess crop health, estimate crop yields, and identify areas affected by pests or diseases. This information assists farmers in making informed decisions about irrigation, fertilization, and pest control, leading to improved crop productivity and resource management.
  • Disaster management: It plays a crucial role in disaster response and recovery efforts. It helps in mapping the extent of natural disasters like hurricanes, floods, and earthquakes, enabling efficient allocation of resources and aid distribution. It also aids in assessing post-disaster damages and planning reconstruction activities.
  • Geology and mineral exploration: Its techniques, such as hyperspectral imaging and radar, can detect and characterize geological features and mineral deposits. This information supports geological mapping, mineral exploration, and resource assessment.

Remote sensing techniques continue to evolve with advancements in sensor technology, image processing algorithms, and data analysis methods.

With the increasing availability of high-resolution satellite imagery and the integration of remote sensing data with geographic information systems (GIS), its applications and potential are expanding, contributing to a better understanding of our planet and facilitating informed decision-making processes.

How does Remote Sensing Work?

It works by capturing and analyzing electromagnetic radiation emitted or reflected by objects or surfaces on Earth from a distance. Here is a simplified explanation of how remote sensing operates:

How does Remote Sensing Work?

  • Energy source: It begins with an energy source, which can be natural (e.g., sunlight) or artificial (e.g., active sensors like radar). The energy source emits electromagnetic radiation towards the Earth’s surface.
  • Interaction with the target: The emitted energy interacts with the target objects or surfaces. Some of the energy is absorbed, some is reflected, and some may be transmitted through the target. The interaction depends on the properties of the target, such as its composition, texture, and moisture content.
  • Sensor detection: Sensors, typically located on satellites, aircraft, or drones, detect the energy that is reflected or emitted by the target. These sensors can capture a wide range of wavelengths, including visible, infrared, and microwave.
  • Data acquisition: The sensors collect data in the form of digital images or measurements. The data acquired may include the intensity of reflected or emitted energy at different wavelengths.
  • Data transmission and storage: Once collected, the data is transmitted to ground stations or stored on-board the sensor platform. It is then processed and made available for further analysis.
  • Data processing and analysis: Remote sensing data is processed using specialized algorithms and techniques. This includes corrections for atmospheric interference, geometric distortions, and radiometric calibration. The processed data is then analyzed to extract meaningful information about the Earth’s surface.
  • Interpretation and application: The analyzed data is interpreted by experts, such as scientists, geographers, or agronomists. They identify and classify objects, map land cover types, monitor changes, and extract relevant information for various applications.
  • Visualization and communication: The final results are often visualized through maps, images, or other graphical representations. These visual outputs make it easier for decision-makers, scientists, and the public to understand and interpret the information.

It’s important to note that it can utilize both passive and active sensing techniques. Passive sensors detect the naturally occurring energy (e.g., sunlight) that is reflected or emitted by the Earth’s surface. Active sensors, on the other hand, emit their own energy (e.g., radar pulses) and measure the energy that is reflected back.

How It Works In Agriculture?

The process of remote sensing in agriculture works through information gathered by different devices over a period. The gathered data can then be used to analyze different aspects of the crop and yield.

This analysis is used for making changes to the crops to ensure maximum output. The process can be used to conduct a variety of analyses and implement measures accordingly. Common threats faced by farmers are pest infestation and weeds in the crops.

In agriculture, it can help detect those early on and warn the farmers to take the necessary countermeasures to ensure the health of crops. To carry out the process over different areas of land fluctuating in sizes and sorts of harvests, various kinds of devices and sensors are utilized.

Types Of Remote Sensing in Agriculture

In agriculture, remote sensing techniques encompass various methods for collecting and analyzing data about crops and agricultural landscapes. Here are some common types of remote sensing used in agriculture:

1. Optical sensing: Optical sensors capture electromagnetic radiation in the visible, near-infrared (NIR), and thermal infrared (TIR) regions of the electromagnetic spectrum. They provide valuable information about crop health, vegetation indices, and land cover. Optical sensing data is commonly acquired through satellite imagery or aerial photography.

2. Multispectral sensing: Multispectral sensors capture data in several discrete bands within the electromagnetic spectrum. They enable the analysis of specific wavelengths relevant to vegetation health and crop monitoring. Multispectral data is commonly used to calculate vegetation indices like NDVI (Normalized Difference Vegetation Index) and EVI (Enhanced Vegetation Index) for assessing crop conditions.

3. Hyperspectral sensing: Hyperspectral sensors capture data in hundreds of narrow and contiguous spectral bands across the electromagnetic spectrum. This high spectral resolution allows for detailed analysis and identification of specific materials and vegetation characteristics. Hyperspectral data is valuable for disease detection, nutrient assessment, and detailed crop classification.

4. Thermal sensing: Thermal sensors capture data in the TIR region of the electromagnetic spectrum. They measure the emitted radiation from objects, including crops and soil, which is related to their temperature. Thermal sensing is useful for assessing water stress, detecting irrigation efficiency, and monitoring crop health based on temperature variations.

5. Radar sensing: Radar sensors utilize microwave radiation to penetrate cloud cover, vegetation, and soil, allowing for data acquisition regardless of weather conditions. Radar sensors measure the backscattered signal, which provides information about the structure and moisture content of crops and the terrain. Radar data is valuable for mapping topography, monitoring soil moisture, and assessing crop growth stages.

6. LiDAR sensing: LiDAR (Light Detection and Ranging) sensors emit laser pulses and measure the time it takes for the reflected light to return. LiDAR data provides highly accurate three-dimensional information about crop height, canopy structure, and terrain elevation. It is useful for precision agriculture applications, including crop height estimation, terrain modeling, and canopy characterization.

7. Unmanned Aerial Vehicles (UAVs): UAVs equipped with various sensors, such as RGB cameras, multispectral sensors, or thermal sensors, enable high-resolution and flexible data collection at a localized scale. UAVs provide detailed and timely information for crop monitoring, disease detection, and precision agriculture practices.

These different types of remote sensing techniques offer complementary data sources and capabilities, allowing for a comprehensive understanding of agricultural systems.

By integrating and analyzing data from multiple sources, farmers, agronomists, and researchers can gain insights into crop health, growth, nutrient status, water management, and other essential factors that contribute to effective agricultural management.

Types of Sensors

Sensors of various sorts are utilized together to gather various kinds of information over fluctuating sizes of grounds. Sensors are fundamentally categorized into their logistical types. There are satellite sensors, Aerial sensors, and ground-based sensors.

These sensors can be further categorized such as the ground sensors and can come in varying configurations. There are handheld ground sensors, there are vehicle-mounted ground sensors, such as the ones mounted to tractors and there are free-standing ground sensors that are typically mounted to posts and bigger trees.

Ground-based sensors are commonly used for checking the nutrient levels, the moisture content in the soil, and the weather. Using these many changes regarding the use of fertilizers and irrigation can be made to keep the yield high.

The next category of sensors is Aerial sensors. Through the availability of drones, aerial sensors have become quite affordable and accessible.

These aerial sensors can take high-resolution pictures of the land, as well as collect other sensor data cruising at low altitudes for longer periods of time over the crops. The data collected through these sensors can help with weed detection, estimating yield, and other detailed analyses such as measuring the soil salinity and the chlorophyll content.

While they have become accessible and affordable, they are still rendered inoperable in strong winds and cloudy weather, which is a downside of their use.

The farthest of all the sensor platforms for imaging is the satellite sensor. The use of satellites for any kind of imaging was traditionally for governments and militaries. Using satellite imaging in agriculture helps cover a vast area of land and can help with checking crop status.

After an event of a natural disaster, it can help calculate the loss and help estimate crop yield. While there are many upsides to using satellite sensor data, there are many caveats attached to it, for starters, it is expensive and even if you put the cost aside, the imaging must be requested for a specific time typically months in advance.

Which could all be for nothing if there is cloud cover in the requested area at the requested time. Governments across the world have started to open satellite imaging for the public, which could make the process a lot easier in the future.

Working of the Sensor

By identifying the colors in a field of crops, sensors relay information that can be helpful in deducing the status of a plant’s health. Looking at the color of the plant through precise data provided by the sensors, the chlorophyll levels of a plant can be measured through which a farmer can determine any lack in nutrition or a problem with a plant’s health.

The simple data can be extracted through common color sensors, but to get complex information, infrared and short-wave sensors are used.

Working of the Sensors in agriculture

The reflection of light from leaves changes in the infrared spectrum if the leaf is damaged internally, this can also show if there isn’t sufficient water content. One of the most reliable models in agricultural remote sensing is known as the normalized difference vegetation index or NDVI.

Using infrared and Red-Edge sensors, the NDVI model can easily identify damaged crops, which gives farmers more reaction time to take effective countermeasures to save the crops.

These sensors can likewise be utilized to check soil health and measure soil saltiness. Soil with unnecessary salt substances will in general be brighter in the infrared range, which can assist with identifying the soil which needs more water system and treatment.

The utilization of thermal sensors can assist in optimizing the irrigation framework. The heat emitted from any source is displayed as a lighter tone in the infrared range.

After irrigation a farmer can send an aerial Long-frequency Infrared sensor or LWIR over his fields to check which regions are radiating heat due to poor water systems, so the issues with the irrigation framework can be fixed.

Satellite sensors can cover a wide assortment of capacities. As they can bypass climate conditions, they are ideal for horticultural observing. Aside from the Radar and microwave sensors, the GPS from the satellites gives exact location information which is fundamental in new agricultural innovations like self-operated farming hardware and self-driving farm vehicles.

Role and Advantages of Remote Sensing and GIS in Agriculture

It plays a vital role in agriculture by providing valuable information and insights that contribute to improved crop management, increased productivity, and sustainable farming practices. Here are some key ways in which remote sensing is important in agriculture:

Crop Sown Area Estimation

One of the critical uses of remote sensing in horticulture is the assessment of the Crop sown region. Data from aerial and satellite sensors give a precise analysis of planted regions and helps with risk evaluation if there ought to be an event of disaster or catastrophe.

Role and Advantages of Remote Sensing and GIS in Agriculture

Crop health assessment

It allows farmers and agronomists to monitor the health and vigor of crops over large areas. By analyzing satellite or aerial imagery, they can detect early signs of stress, nutrient deficiencies, disease outbreaks, or pest infestations. This early warning system enables timely interventions and targeted treatments, reducing crop losses and optimizing resource allocation.

Yield estimation and forecasting

The data, combined with statistical models, can help estimate and predict crop yields. By analyzing vegetation indices and monitoring factors like canopy cover and biomass, farmers can anticipate potential yield variations and make informed decisions regarding harvesting, storage, and marketing of their produce.

Crop Disease Identification

Gis remote sensing in agriculture makes it simpler to recognize contaminations and pest attacks in crops over huge areas at starting stages. This gives producers an adequate opportunity to apply any counter means to safeguard the harvests from any tremendous losses. This becomes possible through satellite imaging and examination.

Soil Properties

Perhaps the primary element in ensuring a sound yield of harvests is the appropriate support of soil. It directly influences the harvest. Any progressions in farm management or farming system cause soil changes, which in turn influence soil capacity of production.

Characteristics, for instance, Soil salinity, Soil pH, organic substance level, and soil texture can be recognized using remote detection and that data can be analyzed to carry out any significant soil treatment.

Soil moisture mapping gives a precise assessment of water content in the soil which can help with carrying out any upgrades in the irrigation system structure.

Irrigation management

Water is a critical resource in agriculture, and it plays a crucial role in optimizing its usage. By assessing vegetation moisture levels and evapotranspiration rates, it helps farmers determine the precise water requirements of their crops.

This information enables them to implement efficient irrigation strategies, reducing water waste, and ensuring that crops receive adequate moisture for optimal growth.

Flood Impact

Through satellite-based sensors and the data assembled through ground sensors, it can help with giving a ton of definite information to decide an accurate loss assessment.

In case of flooding due to excess rainfall, the areas of land with poor drainage frameworks are at risk of waterlogging which causes basic loss of harvests and yield.

The loss assessment can help with further planning for the damage control and countermeasures for keeping losses to a minimum.

NATCAT Modeling

Remote Sensing in agriculture can assist with assessing current and forecasting Natural Catastrophe hazards. Utilizing the information relayed by sensors and the behavior of regular risks.

This requires risk mapping and calculating hazards through estimating hazards which are finished by PC simulated disaster models.

Remote sensing maps prepared with the assistance of historic information and present information gathered from various sensors help in assigning areas of high capability of flooding with high hazard ratings.

This aids in farming as regions with higher risk ratings are not planted on and get treated for better flood protection for the subsequent season.

Drone Image Analysis for Crop Damage Assessment

Drone picture analysis is utilized in crop assessment for damages because of hailstorms, tree counting, and invasions. The drone imagery is as accurate as the input spatial resolution. Which can be increased as per the requirement.

Nutrient management

It can assist in assessing nutrient deficiencies and managing fertilization practices. By analyzing spectral reflectance patterns, farmers can identify areas of the field with varying nutrient levels.

This allows for targeted application of fertilizers, minimizing excess use and potential environmental contamination while maximizing crop nutrient uptake and productivity.

Environmental impact assessment

It provides a means to assess the environmental impact of agricultural practices. It helps in monitoring soil erosion, evaluating the effectiveness of conservation measures, and identifying areas of potential pollution, such as excessive fertilizer runoff or pesticide drift.

This information supports the implementation of sustainable farming practices, minimizing negative environmental effects and promoting long-term agricultural sustainability.

By leveraging the power of remote sensing technologies, farmers and agricultural professionals can make more informed decisions, optimize resource allocation, and implement sustainable practices. This leads to increased productivity, reduced environmental impact, and improved food security, ultimately benefiting both farmers and consumers.

Density Sensor-based Technologies in Precision Farming

GeoPard is continuously improving its capabilities to process various types of in-field datasets. High-density sensor datasets are supported by our analytics core for further research and collecting field insights.

A user has access to capabilities to import, visualize, analyze, and research geo-referenced high-density data. These operations are supported via the Web/Mobile user interfaces and API.

Analytics capabilities cover:

  1. Supporting data formats either points and polygons
  2. Processing of sensor data to correct the data and to build a continuous surface for a field boundary
  3. Customizing of color schemas to set preferred color codes and classification
  4. Generating of management zones and further creation of Variable Rate Application
  5. Using as a part of multi-layers and cross-layers analytics

An example of Electrical Conductivity data collected by our partners. Density Sensor-based Technologies in Precision FarmingAn example of Electrical Conductivity data collected by our partners.

For agricultural consultants, agronomists, and growers it means more field-collected data can be stored, analyzed, and used in daily operations in a single solution and easily available for data exploration.

For local sensor companies, GeoPard is an excellent tool that supports analytics of the data collected by such companies and provides contextual information: historical and current satellite analysis, topographic field profile based on remote sensing and machinery data

An example of such a successful collaboration is GeoPard integration with FarmVU – soil moisture sensor company. 

What is Density Sensor?

A density sensor is an electronic device used to measure the density of a substance, which is the amount of mass per unit volume. It works by detecting changes in the pressure or frequency of a wave passing through the substance.

They are used in a variety of industries, including food and beverage, pharmaceuticals, and oil and gas, to ensure consistent quality control of products.

For example, in the food industry, they can be used to measure the density of liquid products such as juices, syrups, and sauces to ensure they meet specific standards for taste and texture.

In the oil and gas industry, they are used to measure the density of fluids such as oil, gas, and water to determine their composition and ensure that they are being extracted efficiently. This information is important for determining the volume and value of the extracted material.

Role of Density Sensor in Agriculture

They can play an important role in agriculture by providing valuable information about soil quality and crop health. These sensors measure the density of the soil or plant tissues, which can indicate nutrient levels, moisture content, and other important factors that affect plant growth and yield.

One application of density sensors in agriculture is soil analysis. By measuring the density of the soil, farmers can determine its texture and structure, which can help them make decisions about fertilization, irrigation, and other soil management practices.

For example, sandy soils have lower density than clay soils, which means they drain more quickly and may require more frequent irrigation.

They can also be used to measure the density of plant tissues, such as leaves or stems. This information can help farmers identify nutrient deficiencies or other issues that may be affecting plant growth. For example, plants with low nitrogen levels will have lower leaf density than healthy plants.

Another application of density sensors in agriculture is precision farming. By using them mounted on tractors or drones, farmers can create detailed maps of their fields that show variations in soil density, moisture content, and other factors.

This information can be used to create prescription maps that guide precision application of fertilizers, pesticides, and other inputs. This can help reduce waste, improve crop yields, and protect the environment.

Cloud and Shadow Detection in Agriculture

Cloud and Shadow detection is one of the most important tasks in analytical remote sensing solutions.

If the whole satellite image is 90% clean, there is still a 10% chance that your field will be under clouds/shadows area. The reverse is also true – many systems do not process images with clouds above 70% – although the remaining 30% can help the agronomist or farmer to make the right decision during the season.

At GeoPard, we solve this problem with the help of several machine learning algorithms that work with very high accuracy.

The determination of clouds and cloud shadows

 

We define a cloud mask and a shadow mask at the level of the whole image, and for each field-image pair, we consider what percentage of the field is covered by clouds or shadows from the clouds.

In automatic analytics, we take only completely cloudless images for a specific field, which allows the user to be confident in making decisions based on multi-year analytics.

The GeoPard user has the opportunity to view and even run the analytics himself, even on partially cloudy images.

define a cloud mask and a shadow mask

 

This can still be very useful, for example, during the season to apply Variable Rate spraying with crop protection products based on the latest satellite image, in which 10% of the field’s area is under the clouds. This means that for 90% of the field’s area, the decision will be based on verified data.

Also, users of GeoPard can easily check source images on a regional level in Near-Infrared view, which helps to distinguish clear land from clouds and shadows (see picture attached).

On UI cloud filter is located in the top menu of “Satellite monitoring” module, see screenshots attached.

geopard detected that field is partially located under clouds and shadows

 

Keep in mind that digital ag companies can still struggle with the correct detection of clouds and shadows. In the attached screenshot one such a company creates VR fertilizer map based on clouds and shadows data. So the wrong map leads to wrong agronomic decisions and wrong outcomes in the end.

GeoPard detects clouds and shadows with a high level of accuracy and doesn’t propose to make your Variable Rate decision based on clouds. You can always look at the source images in different views and indices and zoom out to see the picture around.

created VR fertilizer map based on clouds and shadows data

 

Not every solution is the same, choose the best options available on the market!

 

different spectral indices

What is Cloud Detection in Precision Agriculture?

Cloud detection in precision agriculture refers to the process of identifying and monitoring cloud cover in agricultural areas using remote sensing technologies. Clouds can significantly impact agricultural practices and crop productivity, making their detection and analysis crucial for effective farm management.

It involves the use of various sensors, such as satellites, drones, or ground-based instruments, to capture imagery of agricultural fields. These sensors capture data in the form of visible and infrared light, which can be analyzed to determine cloud presence and characteristics.

Its primary purpose in precision agriculture is to assess the spatial and temporal distribution of clouds over agricultural areas.

This information helps farmers and agronomists make informed decisions regarding irrigation, fertilization, pest control, and other farming practices. By understanding cloud cover patterns, farmers can optimize resource allocation and minimize the risk of crop damage or yield reduction.

Cloud detection algorithms analyze the captured imagery to differentiate between cloud pixels and non-cloud pixels.

These algorithms utilize various techniques, such as thresholding, spectral analysis, and machine learning, to identify and classify cloud formations accurately.

The output of algorithms typically includes cloud coverage percentage, cloud type classification, and cloud movement patterns.

Once clouds are detected and their characteristics are determined, farmers can utilize this information to implement precision agriculture techniques.

For example, if a cloud is detected over a specific area of a field, farmers may delay irrigation or pesticide application in that region until the cloud passes. By synchronizing agricultural activities with cloud movements, farmers can optimize resource utilization and minimize unnecessary inputs.

It is particularly beneficial in regions with high cloud cover or where weather patterns change rapidly. By continuously monitoring cloud cover, farmers can adapt their farming practices in real-time, making adjustments based on current weather conditions.

In summary, cloud detection in precision agriculture plays a crucial role in optimizing farming practices and resource management. By accurately identifying and monitoring cloud cover, farmers can make informed decisions to enhance crop productivity, reduce input wastage, and mitigate the risks associated with changing weather conditions.

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