Abstract

Fluorescence spectroscopy, color imaging and multispectral imaging (MSI) have emerged as effective analytical methods for the non-destructive detection of quality attributes of various white meat products such as fish, shrimp, chicken, duck and goose. Based on machine learning and convolutional neural network, these techniques can not only be used to determine the freshness and category of white meat through imaging and analysis, but can also be used to detect various harmful substances in meat products to prevent stale and spoiled meat from entering the market and causing harm to consumer health and even the ecosystem. The development of quality inspection systems based on such techniques to measure and classify white meat quality parameters will help improve the productivity and economic efficiency of the meat industry, as well as the health of consumers. Herein, a comprehensive review and discussion of the literature on fluorescence spectroscopy, color imaging and MSI is presented. The principles of these three techniques, the quality analysis models selected and the research results of non-destructive determinations of white meat quality over the last decade or so are analyzed and summarized. The review is conducted in this highly practical research field in order to provide information for future research directions. The conclusions detail how these efficient and convenient imaging and analytical techniques can be used for non-destructive quality evaluation of white meat in the laboratory and in industry.

Highlights

  • As a global issue, food safety and quality are of increasing concern to companies and customers [1]

  • The latest applications of fluorescence spectroscopy, RGB imaging and multispectral imaging (MSI) are highlighted as promising techniques for non-destructive quality inspection of various white meat foods

  • MSI is a method of capturing images from different spectral bands, sufficient to gather physical, geometric and chemical information about objects in ranges beyond the visible region, and has proven to be the analytical tool of choice for identifying the quality of food and meat

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Summary

Introduction

Food safety and quality are of increasing concern to companies and customers [1]. The production and sale of white meat need to meet specific quality and safety standards. Traditional methods for meat quality and safety evaluation, such as manual inspection, mechanical and chemical methods, are time-consuming and destructive, and cannot meet the requirements of rapid inspection [5]. The meat industry has adopted the most advanced high-speed processing technologies, and meat processors need fast, non-destructive, easy-to-use techniques to control the safety and quality of meat and meat products in order to achieve economic benefits. As far as we know, there is no literature review analyzing the application of various imaging techniques in the non-destructive quality inspection of various white meats. It appears important to review the application of the three techniques based on fluorescence spectroscopy, RGB imaging and MSI in white meat quality determination. FigureT3h.e TaphpeliMcatSioI nsyosf tfelumorecsocnensicsetsspoefctarolsicgohpty,sRoGuBrciem(aHgiLng-2a0n0d0-MFHSISfoAr;wOhciteeamneOatptics, Dunedin, FL, USqAua)liatyndinsfopcecutsioanblheaslebnesen(Nthiokroonu,ghTloykaynod, eJxatpeannsi)veplylursesaeamrcuhletdi-cashashnonwenl sinpeTcatbrlael2c.amera (miniCAM5; QHY-CCD, China) [38]

Quality Evaluation of White Meat
Crustaceans
Poultry
Findings
Discussion
Conclusions
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