CORN BEST MANAGEMENT PRACTICES CHAPTER 22. Matching Remote Sensing to Problems

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CORN BEST MANAGEMENT PRACTICES CHAPTER 22 USDA photo by Regis Lefebure Matching Remote Sensing to Problems Jiyul Chang (Jiyul.Chang@sdstate.edu) and David Clay (David.Clay@sdstate.edu) Remote sensing can provide useful information for a variety of problems. However, there is not a universal solution for all situations because each problem has unique data requirements. Different problems may have different data requirements. For example, the use of remote sensing to scout for pests has a different data requirement than developing an N recommendation. Remote sensing can provide a flexible structure for collecting information that can be analyzed using a variety of approaches. This chapter provides examples of matching remote-sensing information to problems. Remote-sensing Basics Remotely sensed images are composed of individual pixels that have a specified spatial resolution. For each information layer (band) that is monitored, a pixel has one value assigned to that spatial location. For a different information layer, a pixel will likely have a different value assigned to it. For example in a healthy plant, the relative pixel value for the blue band might be 7%, whereas in the near infrared (NIR) band, a healthy plant might reflect 60% of the incoming light (Fig. 22.1). An unhealthy plant may have very different reflectance characteristics. The main advantages of remote sensing are: Figure 22.1 Spectral reflectance of healthy plant, 1. Rapid analysis (an image can be analyzed in a unhealthy plant, and soil in visible and NIR relatively short period of time). wavelengths. (http://www.micasense.com/) 2. Assessment of a large area within a single image. 3. Easy identification of differences within an image. 4. Improved field scouting efficiency. 5. Up-to-date information. 6. Information from areas difficult to access. 7. Data that can be analyzed using a number of different analysis approaches. 8. Remote data collection. 9. Relatively inexpensive data collection that provides a permanent benchmark. 10. Ability to use sensors aboard a UAV (drone) to overcome problems associated with resolution, rapid igrow Corn: Best Management Practices 22-1

data collection and analysis. 11. Potential ability to convert crop reflectance into variable-rate N application maps. Disadvantages include: 1. Multiple stresses can have similar impacts on reflectance. 2. Adverse climatic conditions (e.g., clouds and rain) or temporal changes can influence interpretation of findings. 3. Spectral signature of a plant may be different for each plant growth stage. 4. Ground scouting may be required to confirm problem. 5. Different problems may require different spatial resolution (size of each pixel). 6. Pixel values are not acquired by direct measurement. 7. The spatial resolution may be inadequate. 8. Data analysis and collection need trained and experienced person. 9. Geometric and radiometric correction may be required. 10. Image data may be difficult to convert into variablerate maps. Application of Remote-sensing Technique to Farming Application of remote sensing to precision farming can be separated into 4 unique steps (Fig. 22.2): 1) determine whether remote sensing can help, 2) develop a stress map, 3) identify the yield-limiting factors, and 4) develop a corrective management solution. Remote-sensing data can be visualized and processed in a variety of ways. For example, a true color composite image can be made by displaying the blue, green, and red bands as blue, green, and red colors, respectively. However, a false color composite image is produced when the green, red, and NIR bands are displayed as blue, green and red colors, respectively. In a true color image, healthy plants appear green whereas in a false color image, a healthy plant appears bright red. Images from satellites are useful for identifying problem areas that are not time-sensitive. For example, images of hail-damaged corn fields can be important for crop insurance and for estimating grain yields. Figure 22.3 shows normalized difference vegetation index (NDVI) images derived from Landsat data acquired before and after a hailstorm. The images are useful for identifying the damaged areas and calculating the acreage of the damage. Grain yields can be reduced by nutrient deficiencies, water stress, weeds, insects, and diseases. Information Figure 22.2 The concept of remote-sensing technique for crop management. (Chang et al., 2013) Figure 22.3 Landsat NDVI images before (left) and after a hailstorm (right) The damaged cornfields are within the black circles. (Upper Midwest Aerospace Consortium, umac.org) Figure 22.4 False color IKONOS image (green, red, and near infrared) of corn and soybeans collected on July 17, 2002. (Upper Midwest Aerospace Consortium, umac.org) 22-2 www.igrow.org

about the extent of problems can be identified by scouting the field from the air, scouting the field from the ground, or collecting satellite images (Fig. 22.4). Technical Note for Remote Sensing Remote-sensing indices have been used for making N fertilizer recommendations. The two most commen indices are NDVI [(NIR red)/(nir+red)] and GNDVI [(NIR-Green)/(NIR+Green)]. For NDVI calculations, reflectance in the near infrared and red bands must be collected, whereas reflectance information in the near infrared and green bands must be collected for GNDVI calculations. In some fields, GNDVI has a stronger relationship to N stress than NDVI. Either index can help a farmer switch from a single preplant N recommendation to a split N recommendation, which in turn can reduce fertilizer costs and improve profitability. Across the corn belt, research is being conducted in the development of N management N-based algoriths. Collecting Remote-sensing Information Remote-sensing imagery can be collected using various platforms, including handheld, manned aircraft, UAV (Unmanned Aerial Vehicle), and space-based (satellite). Each platform has different advantages and disadvantages (Table 22.1). Understanding the benefits and limitations of various platforms and sensors is critical for selecting the appropriate remote-sensing system. In a general sense, resolution is directly related to cost. Table 22.1 Advantages and disadvantages of various platforms for remote-sensing data collection. Platform Advantages Disadvantages Hand or ground Can be used to identify the reflectance characteristics of an individual leaf, plant, or area. Flexible availability. Useful for real-time spraying applications. UAV Flexible availability. Relatively low cost. Very high spatial resolution. Changeable sensors. Aircraft Relatively flexible availability. Relatively high spatial resolution. Changeable sensors. Satellite Some free images. Clear and stable images. Large area within each image. Good historical data. Collect the reflectance characteristic from a single point, not creating image. Relatively unstable platform can create blurred images. Geographic distortion. May require certification to operate. May be limited in height above ground. Processing the data into field images may be prone to error. High cost. Availability depends on weather condition. High cost for high spatial resolution images. Clouds may hide ground features. Fixed schedule. Data may not be collected at critical times. May need to sort through many images to obtain useful information. Ground-based Sensors Nonimaging portable sensors such as CropScan, Greenseeker, and many others have been used to identify reflectance characteristics for a variety of problems. For example, these sensors have been used to develop a stress index of corn plants and to sense weeds between corn rows. Sensors mounted on a tractor are used for real-time, variable-rate fertilizer/herbicide applications. Aerial Sensors Aerial sensors can be mounted on manned and unmanned aerial platforms. The primary advantages of aerial sensors are that the high-resolution images are collected quickly and the data can be used for a variety of problems (Fig 22.4). However, the cost can be very high. It may be possible to reduce sample collection costs by using a UAV, commonly known as a drone. UAVs igrow Corn: Best Management Practices 22-3

can fly any time and take images under cloudy conditions if there is no rain and the wind is under 25 mph. Currently restrictions are in place to prevent flying UAVs higher than 400 feet above ground level. Drone restrictions, however, are under review. The primary limitations of UAVs are vibrations, unstable attitude (roll, pitch, and yaw), and variable wind speeds and directions. Space-based Sensors A wide variety of satellite and sensor choices are available (Table 22.2). In general, each sensor collects data within different wavelength intervals and at different resolutions, and each satellite has different revisit times. The spatial resolution of the panchromatic band (black and white or pan band) is generally higher than the resolution for the multispectral (multi) bands. Spatial resolution is the ground area of each pixel within an image. For example, a resolution of 1.84 m means that the pixel has the dimensions of 1.84 by 1.84 m on the ground. Problems with space-based images are that clouds can prevent data collection, the atmosphere can distort reflectance values, and the platforms may have a long revisit time. The data cost can range from free to high. Table 22.2 Characteristics of sensors mounted on satellites that can be used for agriculture. Pan represents panchromatic (black and white) images, and resolution is minimum size of one side of square pixel within an image. Spatial Resolution (m) Temporal Multi-Spectral Bands Pan Multi Revisit days Relative Cost High Spatial Resolution Images GeoEye-1 0.46 1.84 B, G, R, N 2.1 to 8.3 High WorldView-1 0.55 1.7 to 5.9 High WorldView-2 0.52 2.4 B, G, R, N, R-edge, 3 others 1.1 to 3.7 High WorldView-3 0.34 1.38 B, G, R, N, R-edge, 23 others 1 to 4.5 High Pleiades-1A 0.5 2 B, G, R, N Daily High Pleiades-1B 0.5 2 B, G, R, N Daily High QuickBird 0.73 2.9 B, G, R, N 1 to 3.5 High IKONOS 1 4 B, G, R, N 3 High SPOT-6 1.5 6 B, G, R, N 1 to 5 High SPOT-7 1.5 6 B, G, R, N 1 to 5 High RapidEye 5 B, G, R, N, R-edge 1 to 6 High Moderate Spatial Res. Images Sentinel-2 10 B, G, R, N, R-edge, 5 others 5 to 10 Free SPOT-5 5 10 G, R, N, Shortwave IR 2 to 3 Free LANDSAT 7 ETM+ 15 30 B, G, R, N, 3 others 16 Free LANDSAT 8 OLI 15 30 B, G, R, N, 6 others 16 Free B: Blue; G: Green; R: Red; N: NIR; R-edge: Red-edge; IR: Infrared 22-4 www.igrow.org

References and Additional Information Axtell, T. 2004. Using remote sensing to detect nitrogen deficiency in corn. UMAC Success Stories. Available at Upper Midwest Aerospace Consortium, www.umac.org. (accessed 5 November 2015). Chang, J., S.A. Clay, D.E. Clay, and K. Dalsted. 2004. Detecting weed-free and weed-infested areas of a soybean field using near-infrared spectral data. Weed Science. 52:642-648. Chang, J., D.E. Clay, S.A. Clay, and C.L. Reese. 2013. Using remote sensing technique to assess soybean yield limiting factors. In Clay, D.E., C.G. Carlson, S.A. Clay, L. Wagner, D. Deneke, and C. Hay (eds). igrow Soybean: Best Management Practices for Soybean Production. South Dakota State University, SDSU Extension, Brookings, SD. Clay, D.E., T.P. Kharel, C. Reese, D. Beck, C.G. Carlson, S.A. Clay, and G. Reicks. 2012. Winter wheat crop reflectance and N sufficiency index values are influenced by N and water stress. Agron. J. 104:1612-1617. Clay D.E., and J. Shanahan. 2011. GIS Applications in Agriculture: Nutrient Management for Improved Energy Efficiency. Available at crcpress.com (accessed 5 November 2015). Reese, C. 2004. Using remote sensing to make insurance claim for crop damage due to hail event. UMAC Success Story. Available at Upper Midwest Aerospace Consortium, www.umac.org. (accessed 5 November 2015). Reese, C.L., D.E. Clay, S.A. Clay, and G.C. Carlson. 2003. Using Remote Sensing to Detect Weeds and Diseases in a Soybean Field. UMAC Success Story. Upper Midwest Aerospace Consortium. igrow Corn: Best Management Practices 22-5

Acknowledgements Support for this document was provided by South Dakota State University, SDSU Extension, South Dakota Corn Utilization Council, and NASA. Supported in part by: Chang, J. and D.E. Clay. 2016. Chapter 22: Matching Remote Sensing to Problems. In Clay, D.E., C.G. Carlson, S.A. Clay, and E. Byamukama (eds). igrow Corn: Best Management Practices. South Dakota State University. The preceding is presented for informational purposes only. SDSU does not endorse the services, methods or products described herein, and makes no representations or warranties of any kind regarding them. In accordance with Federal civil rights law and U.S. Department of Agriculture (USDA) civil rights regulations and policies, the USDA, its Agencies, offices, and employees, and institutions participating in or administering USDA programs are prohibited from discriminating based on race, color, national origin, religion, sex, gender identity (including gender expression), sexual orientation, disability, age, marital status, family/parental status, income derived from a public assistance program, political beliefs, or reprisal or retaliation for prior civil rights activity, in any program or activity conducted or funded by USDA (not all bases apply to all programs). Remedies and complaint filing deadlines vary by program or incident. Persons with disabilities who require alternative means of communication for program information (e.g., Braille, large print, audiotape, American Sign Language, etc.) should contact the responsible Agency or USDA s TARGET Center at (202) 720-2600 (voice and TTY) or contact USDA through the Federal Relay Service at (800) 877-8339. Additionally, program information may be made available in languages other than English. To file a program discrimination complaint, complete the USDA Program Discrimination Complaint Form, AD-3027, found online at http://www. ascr.usda.gov/complaint_filing_cust.html and at any USDA office or write a letter addressed to USDA and provide in the letter all of the information requested in the form. To request a copy of the complaint form, call (866) 632-9992. Submit your completed form or letter to USDA by: (1) mail: U.S. Department of Agriculture Office of the Assistant Secretary for Civil Rights 1400 Independence Avenue, SW Washington, D.C. 20250-9410; (2) fax: (202) 690-7442; or (3) email: program.intake@usda.gov. USDA is an equal opportunity provider, employer, and lender. 22-6 www.igrow.org