5 Years Impact Factor: 1.53
Author: G Nikhil, S Bhaskar , U Lokesh , G Gouthami
Abstract:
In recent years, rice infections have received an increasing amount of attention. Damage to rice plants leads to lower rice production. Identification of rice diseases early is essential for crops. However, conventional disease detection techniques are not very effective in doing so. Recent advances in convolutional neural networks have resulted in noticeably better images. Because of its excellent classification accuracy, it is particularly well suited for identifying various plant diseases. Plant diseases must be recognized when monitoring crops using technology- based methods. Recent research has demonstrated that CNN (Convolutional Neural Network) is the most efficient deep learning technique for processing leaf image data for illness diagnosis. Processing full leaves also increases computational cost and time, lowering training quality and performance. In order to increase the training sample size and boost classification accuracy, data augmentation is crucial. The
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