Evaluation of the quality of cold meats by computer-assisted image analysis

The quality of 16 types of pork (PK) and poultry (PL) cold meats was evaluated by digital image analysis. Images were acquired in a flatbed scanner. The dry matter, protein, fat, ash and collagen content of the analyzed products was determined, and more than 2800 image texture variables from 12 colo...

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Bibliographic Details
Published inFood science & technology Vol. 67; pp. 37 - 49
Main Authors Zapotoczny, Piotr, Szczypiński, Piotr M., Daszkiewicz, Tomasz
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.04.2016
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Summary:The quality of 16 types of pork (PK) and poultry (PL) cold meats was evaluated by digital image analysis. Images were acquired in a flatbed scanner. The dry matter, protein, fat, ash and collagen content of the analyzed products was determined, and more than 2800 image texture variables from 12 color channels (RGB, Lab*, XYZ, S, V, U) were measured. The results were processed statistically by one-way ANOVA, correlation analysis, discriminant analysis and canonical analysis. Canonical analysis was performed to determine correlations between the chemical composition and image textures of cold meats. The developed statistical model discriminated cold meats with 89%–100% accuracy, subject to product type. The coefficients of correlation between chemical composition and image texture parameters were determined in the range of 0.70–0.92. •The quality of poultry and pork cold meats was evaluated by digital image analysis.•A statistical model for the classification of cold meats was developed.•The coefficients of correlation between the chemical composition and texture of cold meats were calculated.
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content type line 23
ISSN:0023-6438
1096-1127
DOI:10.1016/j.lwt.2015.11.042