Abstract

Although pork freshness is one of the top concerns to consumers, no systems are currently available to the pork industry that could quantitatively predict its spatial distribution in a rapid and nondestructive way. The main objective of this study was to investigate the feasibility of acousto-optical tunable filter (AOTF) based spectral imagery in the visible/near-infrared region for the non-destructive prediction and visualization of the spoilage-indicating chemicals over the surface of intact fresh pork. We developed an AOTF-based spectral imaging system (wavelength range: 550–1000nm) to visualize pork freshness by mapping the predicted total volatile basic nitrogen (TVB-N) content over the surface. Reflectance hyperspectral images of pork loins in packages (n=43) were acquired from day 3 to day 13 post-mortem, and the corresponding TVB-N references were recorded using conventional chemical procedures. The eligible muscle region of interest (EMROI) on a sample surface was auto-segmented, from which the signature spectrum was extracted. After standard normal variate (SNV) filtering, the signature spectra together with their chemical references were fed into a partial least squares regression (PLSR) to create a prediction model on a consecutive spectral range (575–940nm). An analysis of the regression coefficients identified 9 important predictive wavelengths (575, 600, 615, 705, 765, 825, 885, 915, and 935nm). The prediction model was subsequently refined to use the feature wavelengths only. A leave-one-out (LOO) cross-validation showed that the prediction of the TVB-N contents using the refined model was good and had a root mean square error (RMSECV) of 1.94mg/100g and a coefficient of determination (Rcv2) of 0.89. Finally, the freshness distribution over an entire pork surface was visualized by mapping the pixel-wise TVB-N predictions in pseudo-colors based on the refined model. The spatial prediction was also verified in terms of mean and range. The mean values coincided well with their chemical references (with a R2 of 0.81 and a RMSE of 2.58mg/100g), and the range is within reasonable limits (with 95% pixels within 0-50.0mg/100g). The results indicated that the AOTF-based spectral imagery system could be a promising method to predict pork freshness in an in situ test with unprecedented details of the spatial distribution of freshness.Industrial relevance: An AOTF-based VIS/NIR spectral imagery system has the potential for acceptance sampling in meat production plants or for hygienic supervision in the marketplace to predict the freshness of intact chill-stored pork.

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