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  4. Deep CNN model for crops’ diseases detection using leaf images
 
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Deep CNN model for crops’ diseases detection using leaf images

Source
Multidimensional Systems and Signal Processing
ISSN
09236082
Date Issued
2022-09-01
Author(s)
Kurmi, Yashwant
Saxena, Prankur
Kirar, Bhupendra Singh
Gangwar, Suchi
Chaurasia, Vijayshri
Goel, Aditya
DOI
10.1007/s11045-022-00820-4
Volume
33
Issue
3
Abstract
The agricultural yield of any country provides the base for the development of that nation. Sustainable growth needs to maintain crop production up to a certain level that depends on the research of their disease detection and treatment. The general approaches available in the literature follow attributes extraction and training a classifier model for leaf image classification that limits accuracy. The proffered technique eliminates the redundant information from the image dataset. We initially localize the region of interest in terms of the color attributes of leaf image based on the mixture model for region growing. The feature extraction is performed through a proposed deep convolutional neural network model followed by the classification of the leaf images. The deep learning model uses color images to learn the attributes that show different patterns that can be distinguished with the help of a convolutional neural network model. The execution measure of the proposed model is investigated using the PlantVillage dataset. The simulating replica outcomes show that the performance of the proposed model is far better as compared to the existing well-known methods of the domain with mean classifying accuracy and area under the characteristics curve of 95.35% and 94.7%, individually.
Unpaywall
URI
https://d8.irins.org/handle/IITG2025/25957
Subjects
CNN model | Computer-aided diagnosis | Identification and classification | Leaf image preprocessing
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