Detection of Red-Meat Adulteration by Deep Spectral-Spatial Features in Hyperspectral Images

被引:64
作者
Al-Sarayreh, Mahmoud [1 ,2 ]
Reis, Marlon M. [2 ]
Yan, Wei Qi [1 ]
Klette, Reinhard [1 ]
机构
[1] Auckland Univ Technol, Sch Engn Comp & Math Sci, Auckland 1010, New Zealand
[2] AgResearch, Palmerston North 4442, New Zealand
关键词
hyperspectral imaging; spectral-spatial features; meat classification; meat processing; adulteration detection; deep learning; 3D CNN;
D O I
10.3390/jimaging4050063
中图分类号
TB8 [摄影技术];
学科分类号
0804 ;
摘要
This paper provides a comprehensive analysis of the performance of hyperspectral imaging for detecting adulteration in red-meat products. A dataset of line-scanning images of lamb, beef, or pork muscles was collected taking into account the state of the meat (fresh, frozen, thawed, and packing and unpacking the sample with a transparent bag). For simulating the adulteration problem, meat muscles were defined as either a class of lamb or a class of beef or pork. We investigated handcrafted spectral and spatial features by using the support vector machines (SVM) model and self-extraction spectral and spatial features by using a deep convolution neural networks (CNN) model. Results showed that the CNN model achieves the best performance with a 94.4% overall classification accuracy independent of the state of the products. The CNN model provides a high and balanced F-score for all classes at all stages. The resulting CNN model is considered as being simple and fairly invariant to the condition of the meat. This paper shows that hyperspectral imaging systems can be used as powerful tools for rapid, reliable, and non-destructive detection of adulteration in red-meat products. Also, this study confirms that deep-learning approaches such as CNN networks provide robust features for classifying the hyperspectral data of meat products; this opens the door for more research in the area of practical applications (i.e., in meat processing).
引用
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页数:20
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