Prediction of Pork Belly Composition Using the Computer Vision Method on Transverse Cross-Sections
Categoría del artículo: Quality and Safety of Animal Origin Products
Publicado en línea: 29 oct 2015
Páginas: 1009 - 1018
Recibido: 10 sept 2015
Aceptado: 30 abr 2015
DOI: https://doi.org/10.1515/aoas-2015-0034
Palabras clave
© by Jaroslav Čítek
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.
The objective of this study was to identify the pig belly characteristics and to develop regression equations predicting its composition. Based on video image and chemical analysis of 216 bellies, the predictive variables were selected according to their relation to chemically determined belly lipid contents. To estimate the belly fat percentage (BF%), the two best equations constructed were: Equation 1: BF% = 49.960 - 0.7174 × SHME2 + 0.5047 × HE2A (R2 = 0.66, RMSE = 3.22); Equation 2: BF% = 43.888 - 0.6014 × SHME2 + 0.4769 × HE2A + 0.0014 × ARTO2 - 0.2697 × HE3A (R2 = 0.70, RMSE = 2.25), where: SHME2 = lean meat percentage area of the belly 2 from total cut area, HE2A = the Belly2 height at point 1, ARTO2 = the Belly2 total cut area, HE3A = the Belly3 height at point 1. Compared to lean meat, the percentage of belly fat (BF%) appears to be a more appropriate criterion for the objective evaluation of belly composition due to the simplicity and accuracy of the final regression equation (higher R2).