Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning model

Rice is grown almost everywhere in the world, especially in Asian countries, because it is part of the diets of about half of the world's population. However, farmers and planting experts have faced several persistent agricultural obstacles for many years, including many rice diseases. Severe r...

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Main Authors: Yogesh Kumar Rathore, Rekh Ram Janghel, Chetan Swarup, Saroj Kumar Pandey, Ankit Kumar, Kamred Udham Singh, Teekam Singh
Format: Article
Language:English
Published: AIMS Press 2023-03-01
Series:Electronic Research Archive
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/era.2023142?viewType=HTML
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author Yogesh Kumar Rathore
Rekh Ram Janghel
Chetan Swarup
Saroj Kumar Pandey
Ankit Kumar
Kamred Udham Singh
Teekam Singh
author_facet Yogesh Kumar Rathore
Rekh Ram Janghel
Chetan Swarup
Saroj Kumar Pandey
Ankit Kumar
Kamred Udham Singh
Teekam Singh
author_sort Yogesh Kumar Rathore
collection DOAJ
description Rice is grown almost everywhere in the world, especially in Asian countries, because it is part of the diets of about half of the world's population. However, farmers and planting experts have faced several persistent agricultural obstacles for many years, including many rice diseases. Severe rice diseases might result in no grain harvest; hence, in the field of agriculture, a fast, automatic, less expensive, and reliable approach to identifying rice diseases is widely needed. This paper focuses on how to build a lightweight deep learning model to detect rice plant diseases more precisely. To achieve the above objective, we created our own CNN model "LW17" to detect rice plant disease more precisely in comparison to some of the pre-trained models, such as VGG19, InceptionV3, MobileNet, Xception, DenseNet201, etc. Using the proposed methodology, we took UCI datasets for disease detection and tested our model with different layers, different training–testing ratios, different pooling layers, different optimizers, different learning rates, and different epochs. The Light Weight 17 (LW17) model reduced the complexity and computation cost compared to other heavy deep learning models. We obtained the best accuracy of 93.75% with the LW17 model using max pooling with the "Adam" optimizer at a learning rate of 0.001. The model outperformed the other state-of-the-art models with a limited number of layers in the architecture.
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spelling doaj.art-e7a72846036f44008f73f37769d7361e2023-05-08T01:30:15ZengAIMS PressElectronic Research Archive2688-15942023-03-013152813283310.3934/era.2023142Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning modelYogesh Kumar Rathore 0Rekh Ram Janghel1Chetan Swarup 2Saroj Kumar Pandey 3Ankit Kumar4Kamred Udham Singh5Teekam Singh61. Department of Computer Science & Engineering, National Institute of Technology, Raipur, India1. Department of Computer Science & Engineering, National Institute of Technology, Raipur, India2. Department of Basic Science, College of Science and Theoretical Studies, Saudi Electronic University, Riyadh-Male Campus 13316, Saudi Arabia3. Department of Computer Engineering & Application, GLA University Mathura, UP, India3. Department of Computer Engineering & Application, GLA University Mathura, UP, India4. School of Computing, Graphic Era Hill University, Bell Road, Dehradun, Uttarakhand 248002, India5. Department of Computer Science and Engineering Graphic Era Deemed to be University, Dehradun 248002, IndiaRice is grown almost everywhere in the world, especially in Asian countries, because it is part of the diets of about half of the world's population. However, farmers and planting experts have faced several persistent agricultural obstacles for many years, including many rice diseases. Severe rice diseases might result in no grain harvest; hence, in the field of agriculture, a fast, automatic, less expensive, and reliable approach to identifying rice diseases is widely needed. This paper focuses on how to build a lightweight deep learning model to detect rice plant diseases more precisely. To achieve the above objective, we created our own CNN model "LW17" to detect rice plant disease more precisely in comparison to some of the pre-trained models, such as VGG19, InceptionV3, MobileNet, Xception, DenseNet201, etc. Using the proposed methodology, we took UCI datasets for disease detection and tested our model with different layers, different training–testing ratios, different pooling layers, different optimizers, different learning rates, and different epochs. The Light Weight 17 (LW17) model reduced the complexity and computation cost compared to other heavy deep learning models. We obtained the best accuracy of 93.75% with the LW17 model using max pooling with the "Adam" optimizer at a learning rate of 0.001. The model outperformed the other state-of-the-art models with a limited number of layers in the architecture.https://www.aimspress.com/article/doi/10.3934/era.2023142?viewType=HTMLrice diseasestransfer learninguci datasetsdeep learninginceptionv3densenet201vgg19
spellingShingle Yogesh Kumar Rathore
Rekh Ram Janghel
Chetan Swarup
Saroj Kumar Pandey
Ankit Kumar
Kamred Udham Singh
Teekam Singh
Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning model
Electronic Research Archive
rice diseases
transfer learning
uci datasets
deep learning
inceptionv3
densenet201
vgg19
title Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning model
title_full Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning model
title_fullStr Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning model
title_full_unstemmed Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning model
title_short Detection of rice plant disease from RGB and grayscale images using an LW17 deep learning model
title_sort detection of rice plant disease from rgb and grayscale images using an lw17 deep learning model
topic rice diseases
transfer learning
uci datasets
deep learning
inceptionv3
densenet201
vgg19
url https://www.aimspress.com/article/doi/10.3934/era.2023142?viewType=HTML
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