Plant disease classification using deep learning google net model

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Abstract

Plant diseases have been a major crisis that is disturbing the food production. So there is a need to provide proper procedures for plant disease detection at its growing age and also during harvesting stage. Timely disease detection can help the user to respond instantly and sketch for some defensive actions. This detection can be carried out without human intervention by using plant leaf images. Deep learning is progressively best for image detection and classification. In this effort, a deep learning based GoogleNet architecture is used for plant diseases detection. The model is trained using public database of 54,306 images of 14 crop varieties and their respective diseases. It achieves 97.82% accuracy for 14 crop types making it capable of further deployment in a crop detection and protection application.

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Kaur, S., Joshi, G., & Vig, R. (2019). Plant disease classification using deep learning google net model. International Journal of Innovative Technology and Exploring Engineering, 8(9 Special Issue), 319–322. https://doi.org/10.35940/ijitee.I1051.0789S19

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