Abstract

Determining the quality of meat has always been essential for the food industry because consumers prefer superior quality meat. Therefore, the food industry requires the development of a rapid and non-destructive method for meat-quality determination. Over the past few years, a number of techniques have been presented for monitoring meat–chemical attributes. However, most previous techniques are quite expensive, destructive, and require complex hardware to operate. Thus, in this work, we demonstrate a low-cost sensing technique (eliminating the expensive equipment and complicated design) for meat–chemical quality detection. The newly developed system was integrated with a low-cost monochrome camera and ordinary light-emitting diode (LED) light sources, with fifteen different wavebands ranging from 458 to 950 nm. The monochrome camera captures images of the meat sample across a spectral range from 458 to 950 nm using a single snapshot method. The chemical values (e.g., moisture, fat, and protein) were also determined using conventional methods. The collected images were combined to produce a multispectral data cube and to extract spectral data. Partial least squares (PLS) and support vector regression (SVR) modeling were used on the extracted spectra and chemical values. The developed models for meat samples displayed accurate chemical-component prediction ( R 2 > 0.80). Our model, based on a monochrome sensor using only fifteen wavebands, provided reasonable results compared with the previously developed expensive spectroscopic techniques. Therefore, this complementary metal-oxide semiconductor (CMOS) based multispectral sensing technique may have the potential to detect meat quality, thereby facilitating a simple, fast, and cost-effective method applicable to small-scale meat-processing industries.

Highlights

  • Meat has become an important resource for human health; it has a high nutritional value, flavor, and juiciness characteristics [1]

  • The sensitive wavelengths from hyperspectral imaging (HSI) data reflecting the characteristics of spectra for predicting quality parameters of meat sample, such as moisture, fat, and protein, were obtained based on the quality parameters of meat sample, such as moisture, fat, and protein, were obtained based on the regression coefficient plot of the partial least-squares regression (PLSR) model

  • As our results were compared with previous meat quality research based on hyperspectral and NIR spectroscopy [14,24,33], the results presented from our system showed a limited prediction accuracy

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Summary

Introduction

Meat has become an important resource for human health; it has a high nutritional value, flavor, and juiciness characteristics [1]. A consumer’s meat selection is usually based on color, marbling, texture, and juiciness parameters [3]. These parameters are influenced by several chemical attributes. The attributes of moisture, protein, and fat are the largest contributors to meat quality [4]. They play an important role in meat quality and are directly associated with the juiciness, tenderness, marbling, and nutritional characteristics of the meat [5].

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