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Radiometric Compensation for Occluded Crops Imaged Using High-Spatial-Resolution Unmanned Aerial Vehicle System

Author

Listed:
  • Naledzani Ndou

    (Department of GIS and Remote Sensing, University of Fort Hare, Private Bag X1314, Alice 5700, South Africa)

  • Kgabo Humphrey Thamaga

    (Department of GIS and Remote Sensing, University of Fort Hare, Private Bag X1314, Alice 5700, South Africa)

  • Yonela Mndela

    (Department of GIS and Remote Sensing, University of Fort Hare, Private Bag X1314, Alice 5700, South Africa)

  • Adolph Nyamugama

    (Agriculture Research Council, Institute for Soil, Climate and Water (ARC-ISCW), Pretoria 0001, South Africa)

Abstract

Crop characterization is considered a prerequisite to devising effective strategies for ensuring successful implementation of sustainable agricultural management strategies. As such, remote-sensing technology has opened an exciting horizon for crop characterization at reasonable spatial, spectral, and temporal scales. However, the presence of shadows on croplands tends to distort radiometric properties of the crops, subsequently limiting the retrieval of crop-related information. This study proposes a simple and reliable approach for radiometrically compensating crops under total occlusion using brightness-based compensation and thresholding approaches. Unmanned aerial vehicle (UAV) imagery was used to characterize crops at the experimental site. In this study, shadow was demarcated through the computation and use of mean spectral radiance values as the threshold across spectral channels of UAV imagery. Several image classifiers, viz., k-nearest neighbor (KNN), maximum likelihood, multilayer perceptron (MLP), and image segmentation, were used to categorize land features, with a view to determine the areal coverage of crops prior to the radiometric compensation process. Radiometric compensation was then performed to restore radiometric properties of land features under occlusion by performing brightness tuning on the RGB imagery. Radiometric compensation results revealed maize and soil as land features subjected to occlusion. The relative error of the mean results for radiance comparison between lit and occluded regions revealed 26.47% deviation of the restored radiance of occluded maize from that of lit maize. On the other hand, the reasonable REM value of soil was noted to be 50.92%, implying poor radiometric compensation results. Postradiometric compensation classification results revealed increases in the areal coverage of maize cultivars and soil by 40.56% and 12.37%, respectively, after being radiometrically compensated, as predicted by the KNN classifier. The maximum likelihood, MLP, and segmentation classifiers predicted increases in area covered with maize of 18.03%, 22.42%, and 30.64%, respectively. Moreover, these classifiers also predicted increases in the area covered with soil of 1.46%, 10.05%, and 14.29%, respectively. The results of this study highlight the significance of brightness tuning and thresholding approaches in radiometrically compensating occluded crops.

Suggested Citation

  • Naledzani Ndou & Kgabo Humphrey Thamaga & Yonela Mndela & Adolph Nyamugama, 2023. "Radiometric Compensation for Occluded Crops Imaged Using High-Spatial-Resolution Unmanned Aerial Vehicle System," Agriculture, MDPI, vol. 13(8), pages 1-20, August.
  • Handle: RePEc:gam:jagris:v:13:y:2023:i:8:p:1598-:d:1216156
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    References listed on IDEAS

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