This paper describes an approach to the detection rice plants in images of rice fields by using genetic programming. The method involves the evolution of a genetic programming classifier of 20 × 20 pixel windows to distinguish rice and nonrice windows, applies the evolved classifier to each pixel position in a test image in a scanning window fashion and determines the class of a pixel by majority voting. The individual pixel values in the window comprise the terminal set. The four arithmetic operators, augmented by square root, comprise the function set. Fitness is a weighted sum of true positive and true negative rates. The classifier achieves an accuracy of 90% on positive and negative windows and is highly accurate in localizing rice leaves in test images for micro-spraying of nutritional supplements. The evolutionary approach clearly outperforms a thresholding approach based on colour which is unable to distinguish between rice an leaves.
History
Start page
1146
End page
1153
Total pages
8
Outlet
Proceedings of the 2013 IEEE Congress on Evolutionary Computation