Deep hybrid classification model for leaf disease classification of underground crops
R. Salini,
G. Charlyn Pushpa Latha,
Rashmita Khilar
Abstract:Underground crop leave disease classification is the most significant area in the agriculture sector as they are the significant source of carbohydrates for human food. However, a disease-ridden plant could threaten the availability of food for millions of people. Researchers tried to use computer vision (CV) to develop an image classification algorithm that might warn farmers by clicking the images of plant’s leaves to find if the crop is diseased or not. This work develops anew DHCLDC model for underground c… Show more
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