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Citrus green fruit detection via improved feature network extraction

INTRODUCTION: It is crucial to accurately determine the green fruit stage of citrus and formulate detailed fruit conservation and flower thinning plans to increase the yield of citrus. However, the color of citrus green fruits is similar to the background, which results in poor segmentation accuracy...

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Autores principales: Lu, Jianqiang, Yang, Ruifan, Yu, Chaoran, Lin, Jiahan, Chen, Wadi, Wu, Haiwei, Chen, Xin, Lan, Yubin, Wang, Weixing
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9791251/
https://www.ncbi.nlm.nih.gov/pubmed/36578336
http://dx.doi.org/10.3389/fpls.2022.946154
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author Lu, Jianqiang
Yang, Ruifan
Yu, Chaoran
Lin, Jiahan
Chen, Wadi
Wu, Haiwei
Chen, Xin
Lan, Yubin
Wang, Weixing
author_facet Lu, Jianqiang
Yang, Ruifan
Yu, Chaoran
Lin, Jiahan
Chen, Wadi
Wu, Haiwei
Chen, Xin
Lan, Yubin
Wang, Weixing
author_sort Lu, Jianqiang
collection PubMed
description INTRODUCTION: It is crucial to accurately determine the green fruit stage of citrus and formulate detailed fruit conservation and flower thinning plans to increase the yield of citrus. However, the color of citrus green fruits is similar to the background, which results in poor segmentation accuracy. At present, when deep learning and other technologies are applied in agriculture for crop yield estimation and picking tasks, the accuracy of recognition reaches 88%, and the area enclosed by the PR curve and the coordinate axis reaches 0.95, which basically meets the application requirements.To solve these problems, this study proposes a citrus green fruit detection method that is based on improved Mask-RCNN (Mask–Region Convolutional Neural Network) feature network extraction. METHODS: First, the backbone networks are able to integrate low, medium and high level features and then perform end-to-end classification. They have excellent feature extraction capability for image classification tasks. Deep and shallow feature fusion is used to fuse the ResNet(Residual network) in the Mask-RCNN network. This strategy involves assembling multiple identical backbones using composite connections between adjacent backbones to form a more powerful backbone. This is helpful for increasing the amount of feature information that is extracted at each stage in the backbone network. Second, in neural networks, the feature map contains the feature information of the image, and the number of channels is positively related to the number of feature maps. The more channels, the more convolutional layers are needed, and the more computation is required, so a combined connection block is introduced to reduce the number of channels and improve the model accuracy. To test the method, a visual image dataset of citrus green fruits is collected and established through multisource channels such as handheld camera shooting and cloud platform acquisition. The performance of the improved citrus green fruit detection technology is compared with those of other detection methods on our dataset. RESULTS: The results show that compared with Mask-RCNN model, the average detection accuracy of the improved Mask-RCNN model is 95.36%, increased by 1.42%, and the area surrounded by precision-recall curve and coordinate axis is 0.9673, increased by 0.3%. DISCUSSION: This research is meaningful for reducing the effect of the image background on the detection accuracy and can provide a constructive reference for the intelligent production of citrus.
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spelling pubmed-97912512022-12-27 Citrus green fruit detection via improved feature network extraction Lu, Jianqiang Yang, Ruifan Yu, Chaoran Lin, Jiahan Chen, Wadi Wu, Haiwei Chen, Xin Lan, Yubin Wang, Weixing Front Plant Sci Plant Science INTRODUCTION: It is crucial to accurately determine the green fruit stage of citrus and formulate detailed fruit conservation and flower thinning plans to increase the yield of citrus. However, the color of citrus green fruits is similar to the background, which results in poor segmentation accuracy. At present, when deep learning and other technologies are applied in agriculture for crop yield estimation and picking tasks, the accuracy of recognition reaches 88%, and the area enclosed by the PR curve and the coordinate axis reaches 0.95, which basically meets the application requirements.To solve these problems, this study proposes a citrus green fruit detection method that is based on improved Mask-RCNN (Mask–Region Convolutional Neural Network) feature network extraction. METHODS: First, the backbone networks are able to integrate low, medium and high level features and then perform end-to-end classification. They have excellent feature extraction capability for image classification tasks. Deep and shallow feature fusion is used to fuse the ResNet(Residual network) in the Mask-RCNN network. This strategy involves assembling multiple identical backbones using composite connections between adjacent backbones to form a more powerful backbone. This is helpful for increasing the amount of feature information that is extracted at each stage in the backbone network. Second, in neural networks, the feature map contains the feature information of the image, and the number of channels is positively related to the number of feature maps. The more channels, the more convolutional layers are needed, and the more computation is required, so a combined connection block is introduced to reduce the number of channels and improve the model accuracy. To test the method, a visual image dataset of citrus green fruits is collected and established through multisource channels such as handheld camera shooting and cloud platform acquisition. The performance of the improved citrus green fruit detection technology is compared with those of other detection methods on our dataset. RESULTS: The results show that compared with Mask-RCNN model, the average detection accuracy of the improved Mask-RCNN model is 95.36%, increased by 1.42%, and the area surrounded by precision-recall curve and coordinate axis is 0.9673, increased by 0.3%. DISCUSSION: This research is meaningful for reducing the effect of the image background on the detection accuracy and can provide a constructive reference for the intelligent production of citrus. Frontiers Media S.A. 2022-11-30 /pmc/articles/PMC9791251/ /pubmed/36578336 http://dx.doi.org/10.3389/fpls.2022.946154 Text en Copyright © 2022 Lu, Yang, Yu, Lin, Chen, Wu, Chen, Lan and Wang 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
Lu, Jianqiang
Yang, Ruifan
Yu, Chaoran
Lin, Jiahan
Chen, Wadi
Wu, Haiwei
Chen, Xin
Lan, Yubin
Wang, Weixing
Citrus green fruit detection via improved feature network extraction
title Citrus green fruit detection via improved feature network extraction
title_full Citrus green fruit detection via improved feature network extraction
title_fullStr Citrus green fruit detection via improved feature network extraction
title_full_unstemmed Citrus green fruit detection via improved feature network extraction
title_short Citrus green fruit detection via improved feature network extraction
title_sort citrus green fruit detection via improved feature network extraction
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9791251/
https://www.ncbi.nlm.nih.gov/pubmed/36578336
http://dx.doi.org/10.3389/fpls.2022.946154
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