Regression Algorithms in Hyperspectral Data Analysis for Meat Quality Detection and Evaluation

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Abstract

Hyperspectral imaging (HSI) system in tandem with chemometric methods is proposed as a rapid, efficient, cost-saving, and nondestructive detection technique, and multivariate data analysis is an indispensable part of this novel detection technique. In recent years, the rapid progress that we have made in using all kinds of chemometric methods to deal with hyperspectral data of meat products, however, cannot meet the practical needs very well. Thus, in order to give some suggestions on how to select an appropriate algorithm for hyperspectral data analysis, this review, first, briefly introduces the principle of the most widely used regression algorithms, and, more importantly, then focuses on the application of different algorithms in modeling the correlation between the quality attributes of the tested sample and their hyperspectral data. The advantages and limitations of these algorithms are compared and discussed. This review article will provide valuable guidelines for data analysis in the future progress of HSI detection technique.

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Pan, T. T., Sun, D. W., Cheng, J. H., & Pu, H. (2016). Regression Algorithms in Hyperspectral Data Analysis for Meat Quality Detection and Evaluation. Comprehensive Reviews in Food Science and Food Safety, 15(3), 529–541. https://doi.org/10.1111/1541-4337.12191

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