Yield Mapping with Digital Aerial Color Infrared (CIR) Images 1999-01-2847
Yield potential was predicted and mapped for three corn fields in Central Illinois, using digital aerial color infrared images. Three methods, namely statistical (regression) modeling, genetic algorithm optimization and artificial neural networks, were used for developing yield models. Two image resolutions of 3 and 6 m/pixel were used for modeling. All the models were trained using July 31 image and tested using images from July 2 and August 31, all from 1998. Among the three models, artificial neural networks gave best performance, with a prediction error less than 30%. The statistical model resulted in prediction errors in the range of 23 to 54%. The lower resolution images resulted in better prediction accuracy compared to resolutions higher than or equal to the yield resolution. Images after pollination resulted in better accuracy compared to images before pollination.
Citation: GopalaPillai, S., Tian, L., and Bullock, D., "Yield Mapping with Digital Aerial Color Infrared (CIR) Images," SAE Technical Paper 1999-01-2847, 1999, https://doi.org/10.4271/1999-01-2847. Download Citation
Author(s):
Sreekala GopalaPillai, Lei Tian, Donald Bullock
Affiliated:
University of Illinois
Pages: 16
Event:
International Off-Highway & Powerplant Congress & Exposition
ISSN:
0148-7191
e-ISSN:
2688-3627
Also in:
Agricultural Machinery, Tires, Tracks, and Traction-SP-1474, SAE 1999 Transactions - Journal of Commercial Vehicles-V108-2
Related Topics:
Neural networks
Cartography
Simulation and modeling
Imaging and visualization
Mathematical models
Statistical analysis
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