DETECTION OF PLANT DISEASES IN IMAGE PROCESSING
Keywords:
Plant Diseases, Disease Detection, ClassificationAbstract
Disease detection in plants is crucial in the agricultural industry since disease in plants is fairly natural. If adequate care is not done in this region, it has significant consequences for plants, affecting product quality, quantity and productivity. The identification of plant diseases is critical to reducing yield and quantity losses in agricultural products. Plant disease research entails the examination of visually discernible patterns on plants. Plant’s health monitoring and disease detection are important for long-term agriculture. It is extremely difficult to manually monitor the plants for diseases. It necessitates a significant amount of labor, knowledge of plant diseases, and an extended processing time. As a result, image processing is utilized to identify plant ailment.
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