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Plant Disease Detection Using Deep Learning

152 Citations•2022•
J. Jane, Rubel Angelina, S. J. Subhashini
2024 10th International Conference on Communication and Signal Processing (ICCSP)

This article explains how to use DL models to display a variety of plant diseases, allowing for improved efficiency in detecting plant illnesses even before issues emerge.

Abstract

Abstract: Early diagnosis of plant diseases is critical since they have a substantial impact on the growth of their unique species. Many Machine Learning (ML) models have been used to detect and categorize plant diseases, but recent breakthroughs in a subset of ML called Deep Learning (DL) look to hold a lot of promise in terms of improved accuracy. A variety of developed/modified DL architectures, as well as several visualization techniques, are utilized to recognize and identify the symptoms of plant ailments. In addition, a number of performance measurements are used to evaluate various architectures/techniques. This article explains how to use DL models to display a variety of plant diseases. Furthermore, several research gaps are identified, allowing for improved efficiency in detecting plant illnesses even before issues emerge. Keywords: Plant disease; deep learning; convolutional neural networks (CNN), Google Net Architecture, Tensorflow, and PyTorch are some of the tools that can be used;