Abstract

Fat content is one of the most important parameters of beef grading. In this study, a hyperspectral imaging (HSI) system, combined with multivariate data analysis, was adopted for the classification of beef grades. Three types of beef samples, namely Akaushi (AK), USDA prime, and USDA choice, were used for HSI image acquisition in the spectral range of 400–1000 nm. Spectral information was extracted from the image by applying the partial least squares discriminant analysis (PLS-DA) for the three classifications. A total of eight different types of data pre-processing procedures were tested during PLS-DA to evaluate their individual performance, with the accepted pre-processing method selected based on the highest accuracy. Chemical and binary images were generated to visualize the fat mapping of the samples. Quantitative analysis of the samples was performed for the reference measurement of the dry matter and fat content. The highest overall accuracy, 86.5%, was found using the Savitzky–Golay second derivatives pre-processing method for PLS-DA analysis. The optimal wavelength values were found from the beta coefficient curve. The chemical and binary images showed significant differences in fat mapping among the three groups of samples, with AK having the greatest intramuscular fat content and USDA choice having the least. Similar results were observed during the proximate analysis. The findings of this study demonstrate that the HSI technique is a potential tool for the fast and non-destructive determination of beef grades based on fat mapping.

Highlights

  • Meat from beef, pork, lamb, and goat is an important dietary source of protein, vitamins, and minerals necessary for optimal human health [1]

  • Fat content in beef is an important factor for the grading procedure

  • Akaushi beef had the greatest amount of intramuscular fat while United States Department of Agriculture (USDA) choice had the least

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Summary

Introduction

Meat from beef, pork, lamb, and goat is an important dietary source of protein, vitamins, and minerals necessary for optimal human health [1]. Meat fat is determined by the solvent extraction of the total lipids followed by the conversion of fatty acids to their methyl esters, and the final analysis is performed by gas chromatography [12]. This method requires time and chemicals and is a high-cost procedure, which are drawbacks for routine analysis. For beef grading, a subjective characteristic assessment is performed by highly skilled USDA meat graders and the meat attributes are measured using electronic instruments [13] This process is subjective and requires expert-level knowledge. This is where HSI, in combination with machine learning, can be a potential option

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