3.8 Article

Plant Leaf Disease Detection Using CNN Algorithm

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IGI GLOBAL
DOI: 10.4018/IJISMD.2021010101

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CNN; Deep Learning; Feature Extraction; Fuzzy; Genetic Algorithm; Leaf Disease; Plant Village; PSO

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Agriculture plays a vital role in India's economic development, with farmers selecting appropriate crops for each season based on soil fertility, weather conditions, and crop values. To meet the increasing population demands, agricultural industries are looking for improved means of food production. The application of precision agriculture technologies can help enhance farming efficiency and yields.
Agriculture is the primary source of economic development in India. The fertility of soil, weather conditions, and crop economic values make farmers select appropriate crops for every season. To meet the increasing population requirements, agricultural industries look for improved means of food production. Researchers are in search of new technologies that would reduce investment and significantly improve the yields. Precision is a new technology that helps in improving farming techniques. Pest and weed detection and plant leaf disease detection are the noteworthy applications of precision agriculture. The main aim of this paper is to identify the diseased and healthy leaves of distinct plants by extracting features from input images using CNN algorithm. These features extracted help in identifying the most relevant class for images from the datasets. The authors have observed that the proposed system consumes an average time of 3.8 seconds for identifying the image class with more than 94.5% accuracy.

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