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Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion

To achieve accurate detection the content of multiple parts pork adulterated in mutton under the effect of mutton flavor essence and colorant by RGB images, the improved CBAM-Invert-ResNet50 network based on the attention mechanism and the inversion residual was used to detect the content of pork fr...

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Autores principales: Bai, Zongxiu, Zhu, Rongguang, He, Dongyu, Wang, Shichang, Huang, Zhongtao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10572890/
https://www.ncbi.nlm.nih.gov/pubmed/37835247
http://dx.doi.org/10.3390/foods12193594
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author Bai, Zongxiu
Zhu, Rongguang
He, Dongyu
Wang, Shichang
Huang, Zhongtao
author_facet Bai, Zongxiu
Zhu, Rongguang
He, Dongyu
Wang, Shichang
Huang, Zhongtao
author_sort Bai, Zongxiu
collection PubMed
description To achieve accurate detection the content of multiple parts pork adulterated in mutton under the effect of mutton flavor essence and colorant by RGB images, the improved CBAM-Invert-ResNet50 network based on the attention mechanism and the inversion residual was used to detect the content of pork from the back, front leg, and hind leg in adulterated mutton. The deep features of different parts extracted by the CBAM-Invert-ResNet50 were fused by feature, stitched, and combined with transfer learning, and the content of pork from mixed parts in adulterated mutton was detected. The results showed that the R(2) of the CBAM-Invert-ResNet50 for the back, front leg, and hind leg datasets were 0.9373, 0.8876, and 0.9055, respectively, and the RMSE values were 0.0268 g·g(−1), 0.0378 g·g(−1), and 0.0316 g·g(−1), respectively. The R(2) and RMSE of the mixed dataset were 0.9264 and 0.0290 g·g(−1), respectively. When the features of different parts were fused, the R(2) and RMSE of the CBAM-Invert-ResNet50 for the mixed dataset were 0.9589 and 0.0220 g·g(−1), respectively. Compared with the model built before feature fusion, the R(2) of the mixed dataset increased by 0.0325, and the RMSE decreased by 0.0070 g·g(−1). The above results indicated that the CBAM-Invert-ResNet50 model could effectively detect the content of pork from different parts in adulterated mutton as additives. Feature fusion combined with transfer learning can effectively improve the detection accuracy for the content of mixed parts of pork in adulterated mutton. The results of this study can provide technical support and a basis for maintaining the mutton market order and protecting mutton food safety supervision.
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spelling pubmed-105728902023-10-14 Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion Bai, Zongxiu Zhu, Rongguang He, Dongyu Wang, Shichang Huang, Zhongtao Foods Article To achieve accurate detection the content of multiple parts pork adulterated in mutton under the effect of mutton flavor essence and colorant by RGB images, the improved CBAM-Invert-ResNet50 network based on the attention mechanism and the inversion residual was used to detect the content of pork from the back, front leg, and hind leg in adulterated mutton. The deep features of different parts extracted by the CBAM-Invert-ResNet50 were fused by feature, stitched, and combined with transfer learning, and the content of pork from mixed parts in adulterated mutton was detected. The results showed that the R(2) of the CBAM-Invert-ResNet50 for the back, front leg, and hind leg datasets were 0.9373, 0.8876, and 0.9055, respectively, and the RMSE values were 0.0268 g·g(−1), 0.0378 g·g(−1), and 0.0316 g·g(−1), respectively. The R(2) and RMSE of the mixed dataset were 0.9264 and 0.0290 g·g(−1), respectively. When the features of different parts were fused, the R(2) and RMSE of the CBAM-Invert-ResNet50 for the mixed dataset were 0.9589 and 0.0220 g·g(−1), respectively. Compared with the model built before feature fusion, the R(2) of the mixed dataset increased by 0.0325, and the RMSE decreased by 0.0070 g·g(−1). The above results indicated that the CBAM-Invert-ResNet50 model could effectively detect the content of pork from different parts in adulterated mutton as additives. Feature fusion combined with transfer learning can effectively improve the detection accuracy for the content of mixed parts of pork in adulterated mutton. The results of this study can provide technical support and a basis for maintaining the mutton market order and protecting mutton food safety supervision. MDPI 2023-09-27 /pmc/articles/PMC10572890/ /pubmed/37835247 http://dx.doi.org/10.3390/foods12193594 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
Bai, Zongxiu
Zhu, Rongguang
He, Dongyu
Wang, Shichang
Huang, Zhongtao
Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion
title Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion
title_full Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion
title_fullStr Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion
title_full_unstemmed Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion
title_short Adulteration Detection of Pork in Mutton Using Smart Phone with the CBAM-Invert-ResNet and Multiple Parts Feature Fusion
title_sort adulteration detection of pork in mutton using smart phone with the cbam-invert-resnet and multiple parts feature fusion
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10572890/
https://www.ncbi.nlm.nih.gov/pubmed/37835247
http://dx.doi.org/10.3390/foods12193594
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