Mulberry leaf disease detection using deep learning

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Abstract

Disease diagnosis and classification in a mulberry plant using deep learning is an interesting technique which can be useful for farmers and researchers to identify and classify diseases. It helps to manage plant pathogens within fields effectively and automatically at a minimal cost. Major mulberry diseases usually express their symptoms on leaf area at the early stage of infection. Infections can be analysed and classified by processing the image using a computer or machine using different algorithms to interpret the information. This paper gives us a brief knowledge of mulberry leaf diseases which is used for automatic detection of disease. It presents in detail that the algorithm and techniques which are involved in classification based on different criteria for image segmentation. Our goal is to develop a more suitable deep algorithm for our task. These convolutional layers are mostly used for image processing. The system identifies and classify mulberry leaf diseases effectively with complex scenarios from the affected areas using CNN.

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Deva Hema, D., Dey, S., Krishabh, & Saha, A. (2019). Mulberry leaf disease detection using deep learning. International Journal of Engineering and Advanced Technology, 9(1), 3366–3371. https://doi.org/10.35940/ijeat.A1521.109119

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