Article ID Journal Published Year Pages File Type
788659 International Journal of Refrigeration 2015 9 Pages PDF
Abstract

•Hyperspectral imaging was used for classifying fresh and frozen-thawed pork meat.•Grey level-gradient co-occurrence matrix was used to extract textural variables.•Partial least squares discriminant analysis was used as classification method.•Spectral and textural features were fused for establishment of classifying models.•The best correct classification rate was 97.73% based on the fused variables.

Fresh and frozen-thawed (F-T) pork meats were classified by Vis–NIR hyperspectral imaging. Eight optimal wavelengths (624, 673, 460, 588, 583, 448, 552 and 609 nm) were selected by successive projections algorithm (SPA). The first three principal components (PCs) obtained by principal component analysis (PCA) accounted for over 99.98% of variance. Gray-level-gradient co-occurrence matrix (GLGCM) was applied to extract 45 textural features from the PC images. The correct classification rate (CCR) was employed to evaluate the performance of the partial least squares-discriminate analysis (PLS-DA) models, by using (A) the reflected spectra at full wavelengths and (B) those at the optimal wavelengths, (C) the extracted textures based on the PC images, and (D) the fused variables combining spectra at the optimal wavelengths and textures. The results showed that the best CCR of 97.73% was achieved by applying (D), confirming the high potential of textures for fresh and F-T meat discrimination.

Related Topics
Physical Sciences and Engineering Engineering Mechanical Engineering
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