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Rapid identification of counterfeited beef using deep learning-aided spectroscopy: Detecting colourant and curing agent adulteration

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Abstract
"The adulteration of meat products using colourants and curing agents has heightened concerns over food safety, thereby necessitating the development of advanced detection methods. This study introduces a deep-learning-based spectroscopic method for swiftly identifying counterfeit beef altered to appear fresh. The experiment involved 60 beef samples, half of which were artificially adulterated using a colouring solution. Despite meticulous analysis of the beef's colour attributes, no significant differences were observed between the fresh and adulterated samples. However, our method, utilising a 344?1040 nm spectral range, achieved a classification accuracy of 98.84%. To enhance practicality, we employed gradient-weighted class activation mapping and identified the 580?600 nm range as particularly influential for classification. Remarkably, even when we narrowed the input to the model to this spectral range, a high level of classification accuracy was maintained. To further validate the model's robustness and generalisability, we allocated 70 beef samples to an external validation set. Comparative performance analysis revealed that our model outperformed traditional machine learning algorithms, such as SVM and logistic regression, by 9.3% and 28.4%, respectively. Overall, this study offers invaluable insights for detecting counterfeited beef, thereby contributing to the preservation of meat product quality and integrity within the food industry. ? 2023 The Authors
Author(s)
Jo, EunjungLee, YoungjooLee, YumiBaek, JaewooKim, Jae Gwan
Issued Date
2023-11
Type
Article
DOI
10.1016/j.fct.2023.114088
URI
https://scholar.gist.ac.kr/handle/local/9902
Publisher
Elsevier Ltd
Citation
Food and Chemical Toxicology, v.181
ISSN
0278-6915
Appears in Collections:
Department of Biomedical Science and Engineering > 1. Journal Articles
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