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FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification

In production, due to natural conditions or process peculiarities, a single product often may exhibit more than one type of defect. The accurate identification of all defects has an important guiding significance and practical value to improve the planting and production processes. Concerning the su...

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Autores principales: Xu, Xiaohang, Zheng, Hong, You, Changhui, Guo, Zhongyuan, Wu, Xiongbin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7826679/
https://www.ncbi.nlm.nih.gov/pubmed/33429978
http://dx.doi.org/10.3390/s21020392
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author Xu, Xiaohang
Zheng, Hong
You, Changhui
Guo, Zhongyuan
Wu, Xiongbin
author_facet Xu, Xiaohang
Zheng, Hong
You, Changhui
Guo, Zhongyuan
Wu, Xiongbin
author_sort Xu, Xiaohang
collection PubMed
description In production, due to natural conditions or process peculiarities, a single product often may exhibit more than one type of defect. The accurate identification of all defects has an important guiding significance and practical value to improve the planting and production processes. Concerning the surface defect classification task, convolutional neural networks can be implemented as a powerful instrument. However, a typical convolutional neural network tends to consider an image as an inseparable entity and a single instance when extracting features; moreover, it may overlook semantic correlations between different labels. To address these limitations, in the present paper, we proposed a feature-wise attention-based relation network (FAR-Net) for multilabel jujube defect classification. The network included four different modules designed for (1) image feature extraction, (2) label-wise feature aggregation, (3) feature activation and deactivation, and (4) correlation learning among labels. To evaluate the proposed method, a unique multilabel jujube defect dataset was constructed as a benchmark for the multilabel classification task of the jujube defect images. The results of experiments show that owing to the relation learning mechanism, the average precision of the three main composite defects in the dataset increases by 5.77%, 4.07%, and 3.50%, respectively, compared to the backbone of our network, namely Inception v3, which indicated that the proposed FAR-Net effectively facilitated the learning of correlation between labels and eventually, improved the multilabel classification accuracy.
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spelling pubmed-78266792021-01-25 FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification Xu, Xiaohang Zheng, Hong You, Changhui Guo, Zhongyuan Wu, Xiongbin Sensors (Basel) Article In production, due to natural conditions or process peculiarities, a single product often may exhibit more than one type of defect. The accurate identification of all defects has an important guiding significance and practical value to improve the planting and production processes. Concerning the surface defect classification task, convolutional neural networks can be implemented as a powerful instrument. However, a typical convolutional neural network tends to consider an image as an inseparable entity and a single instance when extracting features; moreover, it may overlook semantic correlations between different labels. To address these limitations, in the present paper, we proposed a feature-wise attention-based relation network (FAR-Net) for multilabel jujube defect classification. The network included four different modules designed for (1) image feature extraction, (2) label-wise feature aggregation, (3) feature activation and deactivation, and (4) correlation learning among labels. To evaluate the proposed method, a unique multilabel jujube defect dataset was constructed as a benchmark for the multilabel classification task of the jujube defect images. The results of experiments show that owing to the relation learning mechanism, the average precision of the three main composite defects in the dataset increases by 5.77%, 4.07%, and 3.50%, respectively, compared to the backbone of our network, namely Inception v3, which indicated that the proposed FAR-Net effectively facilitated the learning of correlation between labels and eventually, improved the multilabel classification accuracy. MDPI 2021-01-08 /pmc/articles/PMC7826679/ /pubmed/33429978 http://dx.doi.org/10.3390/s21020392 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Xu, Xiaohang
Zheng, Hong
You, Changhui
Guo, Zhongyuan
Wu, Xiongbin
FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification
title FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification
title_full FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification
title_fullStr FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification
title_full_unstemmed FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification
title_short FAR-Net: Feature-Wise Attention-Based Relation Network for Multilabel Jujube Defect Classification
title_sort far-net: feature-wise attention-based relation network for multilabel jujube defect classification
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7826679/
https://www.ncbi.nlm.nih.gov/pubmed/33429978
http://dx.doi.org/10.3390/s21020392
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