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Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet

Brown blight, target spot, and tea coal diseases are three major leaf diseases of tea plants, and Apolygus lucorum is a major pest in tea plantations. The traditional symptom recognition of tea leaf diseases and insect pests is mainly through manual identification, which has some problems, such as l...

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Autores principales: Li, He, Shi, Hongtao, Du, Anghong, Mao, Yilin, Fan, Kai, Wang, Yu, Shen, Yaozong, Wang, Shuangshuang, Xu, Xiuxiu, Tian, Lili, Wang, Hui, Ding, Zhaotang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9355617/
https://www.ncbi.nlm.nih.gov/pubmed/35937317
http://dx.doi.org/10.3389/fpls.2022.922797
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author Li, He
Shi, Hongtao
Du, Anghong
Mao, Yilin
Fan, Kai
Wang, Yu
Shen, Yaozong
Wang, Shuangshuang
Xu, Xiuxiu
Tian, Lili
Wang, Hui
Ding, Zhaotang
author_facet Li, He
Shi, Hongtao
Du, Anghong
Mao, Yilin
Fan, Kai
Wang, Yu
Shen, Yaozong
Wang, Shuangshuang
Xu, Xiuxiu
Tian, Lili
Wang, Hui
Ding, Zhaotang
author_sort Li, He
collection PubMed
description Brown blight, target spot, and tea coal diseases are three major leaf diseases of tea plants, and Apolygus lucorum is a major pest in tea plantations. The traditional symptom recognition of tea leaf diseases and insect pests is mainly through manual identification, which has some problems, such as low accuracy, low efficiency, strong subjectivity, and so on. Therefore, it is very necessary to find a method that could effectively identify tea plants diseases and pests. In this study, we proposed a recognition framework of tea leaf disease and insect pest symptoms based on Mask R-CNN, wavelet transform and F-RNet. First, Mask R-CNN model was used to segment disease spots and insect spots from tea leaves. Second, the two-dimensional discrete wavelet transform was used to enhance the features of the disease spots and insect spots images, so as to obtain the images with four frequencies. Finally, the images of four frequencies were simultaneously input into the four-channeled residual network (F-RNet) to identify symptoms of tea leaf diseases and insect pests. The results showed that Mask R-CNN model could detect 98.7% of DSIS, which ensure that almost disease spots and insect spots can be extracted from leaves. The accuracy of F-RNet model is 88%, which is higher than that of the other models (like SVM, AlexNet, VGG16 and ResNet18). Therefore, this experimental framework can accurately segment and identify diseases and insect spots of tea leaves, which not only of great significance for the accurate identification of tea plant diseases and insect pests, but also of great value for further using artificial intelligence to carry out the comprehensive control of tea plant diseases and insect pests.
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spelling pubmed-93556172022-08-06 Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet Li, He Shi, Hongtao Du, Anghong Mao, Yilin Fan, Kai Wang, Yu Shen, Yaozong Wang, Shuangshuang Xu, Xiuxiu Tian, Lili Wang, Hui Ding, Zhaotang Front Plant Sci Plant Science Brown blight, target spot, and tea coal diseases are three major leaf diseases of tea plants, and Apolygus lucorum is a major pest in tea plantations. The traditional symptom recognition of tea leaf diseases and insect pests is mainly through manual identification, which has some problems, such as low accuracy, low efficiency, strong subjectivity, and so on. Therefore, it is very necessary to find a method that could effectively identify tea plants diseases and pests. In this study, we proposed a recognition framework of tea leaf disease and insect pest symptoms based on Mask R-CNN, wavelet transform and F-RNet. First, Mask R-CNN model was used to segment disease spots and insect spots from tea leaves. Second, the two-dimensional discrete wavelet transform was used to enhance the features of the disease spots and insect spots images, so as to obtain the images with four frequencies. Finally, the images of four frequencies were simultaneously input into the four-channeled residual network (F-RNet) to identify symptoms of tea leaf diseases and insect pests. The results showed that Mask R-CNN model could detect 98.7% of DSIS, which ensure that almost disease spots and insect spots can be extracted from leaves. The accuracy of F-RNet model is 88%, which is higher than that of the other models (like SVM, AlexNet, VGG16 and ResNet18). Therefore, this experimental framework can accurately segment and identify diseases and insect spots of tea leaves, which not only of great significance for the accurate identification of tea plant diseases and insect pests, but also of great value for further using artificial intelligence to carry out the comprehensive control of tea plant diseases and insect pests. Frontiers Media S.A. 2022-07-22 /pmc/articles/PMC9355617/ /pubmed/35937317 http://dx.doi.org/10.3389/fpls.2022.922797 Text en Copyright © 2022 Li, Shi, Du, Mao, Fan, Wang, Shen, Wang, Xu, Tian, Wang and Ding. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
Li, He
Shi, Hongtao
Du, Anghong
Mao, Yilin
Fan, Kai
Wang, Yu
Shen, Yaozong
Wang, Shuangshuang
Xu, Xiuxiu
Tian, Lili
Wang, Hui
Ding, Zhaotang
Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet
title Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet
title_full Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet
title_fullStr Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet
title_full_unstemmed Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet
title_short Symptom recognition of disease and insect damage based on Mask R-CNN, wavelet transform, and F-RNet
title_sort symptom recognition of disease and insect damage based on mask r-cnn, wavelet transform, and f-rnet
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9355617/
https://www.ncbi.nlm.nih.gov/pubmed/35937317
http://dx.doi.org/10.3389/fpls.2022.922797
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