2022
DOI: 10.21203/rs.3.rs-1925394/v1
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Fusion of spectral and textural data of hyperspectral imaging for glycine content prediction in beef using SFCN algorithms

Abstract: Glycine, the simplest free amino acid, is one of the most important factors affecting the flavor of beef. In this paper, a fast and non-destructive method combining near-infrared hyperspectral (900–1700 nm) and textural data was first proposed to determine the content and distribution of glycine in beef. On the basis of spectral information pre-processing, spectral features were extracted by the interval Variable Iterative Space Shrinkage Approach, Competitive Adaptive Reweighting algorithm and Uninformative V… Show more

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