Feature Extraction for the Discrimination of Crop and Weed in Digital Images using Open CV and Python

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Abstract

Variable rate herbicide spraying technology has become integral part of precision agriculture and this system works based on the weed density map of agriculture field. To improve the accuracy of crop/weed discrimination process this paper presents different image processing techniques. Edge detection process for obtaining contour is performed by using sobel operator with 5X5 gradient operator and canny edge detector. Grayscale morphological operations are performed to remove gray overlap due to background of the image in order to improve the accuracy of the segmentation process. In order to check the discrimination accuracy and extracting image features, the experiment was performed on 100 images of maize plant and weed plant leaves. From the experimental results, it is concluded that the proposed method can accurately extract leaf parameters for discrimination process with soil background.

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K, Senthilkumar., Subramaniyam, S., … HR, I. (2020). Feature Extraction for the Discrimination of Crop and Weed in Digital Images using Open CV and Python. International Journal of Engineering and Advanced Technology, 9(3), 3461–3465. https://doi.org/10.35940/ijeat.b3245.029320

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