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Image-based Plant Diseases Detection using Deep Learning

Authors :
Subhash Chandra Patel
Adesh V. Panchal
Mukesh Soni
Pankaj Kumar
Ihtiram Raza Khan
K. Bagyalakshmi
Source :
Materials Today: Proceedings. 80:3500-3506
Publication Year :
2023
Publisher :
Elsevier BV, 2023.

Abstract

Agriculture plays a major role in developing countries like India, however the food security still remains a vital issue. Most of the crops get wasted due to lack of storage facility, transportation, and plant diseases. More than 15% of the crops get wasted in India due to diseases and hence it has become one of the major concern to be resolved. There is a need of automatic system that can identify these diseases and help farmers to take appropriate steps to get rid of crop loss. Farmers have followed the conventional method of identifying the plant disease with their naked eyes, and it not possible for all the farmers to identify these diseases the same way. With the advance in Artificial Intelligence, there is a need to incorporate the facilities of the computer vision in the field of agriculture. Deep Learning rich libraries and user as well as developer friendly environment to work with, all these qualities make Deep Learning as the favorable method to get started with this problem. In this paper we have used Deep Learning because of the advantages it offers to work with images especially in image classification to get improvised results. The methodology includes taking leaves of infected crops and label them as per the disease pattern. The images of infected leaves are processed pixel based operations are applied to improve the information from the image. As a next step feature extraction is done followed by image segmentation and at the last classification of crop diseases based on the patterns extracted from the diseased leaves. The CNN (Convolutional Neural Network) is used for the classification of diseases, for the demonstration purpose the public dataset is used consisting of around 87 K images (RGB type images) including healthy as well as diseased leaves.

Details

ISSN :
22147853
Volume :
80
Database :
OpenAIRE
Journal :
Materials Today: Proceedings
Accession number :
edsair.doi...........1dea50649b1d11ba0dc6cf318b64ca5b