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A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging

Hyperspectral imaging combined with chemometric approaches is proven to be a powerful tool for the quality evaluation and control of fruits. In fruit defect-detection scenarios, developing an unsupervised anomaly detection framework is vital, as defect sample preparation is labor-intensive and time-...

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Autores principales: Liu, Yisen, Zhou, Songbin, Wan, Zhiyong, Qiu, Zefan, Zhao, Lulu, Pang, Kunkun, Li, Chang, Yin, Zexuan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10378827/
https://www.ncbi.nlm.nih.gov/pubmed/37509761
http://dx.doi.org/10.3390/foods12142669
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author Liu, Yisen
Zhou, Songbin
Wan, Zhiyong
Qiu, Zefan
Zhao, Lulu
Pang, Kunkun
Li, Chang
Yin, Zexuan
author_facet Liu, Yisen
Zhou, Songbin
Wan, Zhiyong
Qiu, Zefan
Zhao, Lulu
Pang, Kunkun
Li, Chang
Yin, Zexuan
author_sort Liu, Yisen
collection PubMed
description Hyperspectral imaging combined with chemometric approaches is proven to be a powerful tool for the quality evaluation and control of fruits. In fruit defect-detection scenarios, developing an unsupervised anomaly detection framework is vital, as defect sample preparation is labor-intensive and time-consuming, especially for exploring potential defects. In this paper, a spectral–spatial, information-based, self-supervised anomaly detection (SSAD) approach is proposed. During training, an auxiliary classifier is proposed to identify the projection axes of principal component (PC) images that were transformed from the hyperspectral data cubes. In test time, the fully connected layer of the learned classifier was used as a ‘spectral–spatial’ feature extractor, and the feature similarity metric was adopted as the score function for the downstream anomaly evaluation task. The proposed network was evaluated with two fruit data sets: a strawberry data set with bruised, infected, chilling-injured, and contaminated test samples and a blueberry data set with bruised, infected, chilling-injured, and wrinkled samples as anomalies. The results show that the SSAD yielded the best anomaly detection performance (AUC = 0.923 on average) over the baseline methods, and the visualization results further confirmed its advantage in extracting effective ‘spectral–spatial’ latent representation. Moreover, the robustness of SSAD is verified with the data pollution experiment; it performed significantly better than the baselines when a portion of anomalous samples was involved in the training process.
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spelling pubmed-103788272023-07-29 A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging Liu, Yisen Zhou, Songbin Wan, Zhiyong Qiu, Zefan Zhao, Lulu Pang, Kunkun Li, Chang Yin, Zexuan Foods Article Hyperspectral imaging combined with chemometric approaches is proven to be a powerful tool for the quality evaluation and control of fruits. In fruit defect-detection scenarios, developing an unsupervised anomaly detection framework is vital, as defect sample preparation is labor-intensive and time-consuming, especially for exploring potential defects. In this paper, a spectral–spatial, information-based, self-supervised anomaly detection (SSAD) approach is proposed. During training, an auxiliary classifier is proposed to identify the projection axes of principal component (PC) images that were transformed from the hyperspectral data cubes. In test time, the fully connected layer of the learned classifier was used as a ‘spectral–spatial’ feature extractor, and the feature similarity metric was adopted as the score function for the downstream anomaly evaluation task. The proposed network was evaluated with two fruit data sets: a strawberry data set with bruised, infected, chilling-injured, and contaminated test samples and a blueberry data set with bruised, infected, chilling-injured, and wrinkled samples as anomalies. The results show that the SSAD yielded the best anomaly detection performance (AUC = 0.923 on average) over the baseline methods, and the visualization results further confirmed its advantage in extracting effective ‘spectral–spatial’ latent representation. Moreover, the robustness of SSAD is verified with the data pollution experiment; it performed significantly better than the baselines when a portion of anomalous samples was involved in the training process. MDPI 2023-07-11 /pmc/articles/PMC10378827/ /pubmed/37509761 http://dx.doi.org/10.3390/foods12142669 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/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 (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Liu, Yisen
Zhou, Songbin
Wan, Zhiyong
Qiu, Zefan
Zhao, Lulu
Pang, Kunkun
Li, Chang
Yin, Zexuan
A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging
title A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging
title_full A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging
title_fullStr A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging
title_full_unstemmed A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging
title_short A Self-Supervised Anomaly Detector of Fruits Based on Hyperspectral Imaging
title_sort self-supervised anomaly detector of fruits based on hyperspectral imaging
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10378827/
https://www.ncbi.nlm.nih.gov/pubmed/37509761
http://dx.doi.org/10.3390/foods12142669
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