Analysis of beef quality according to color changes using computer vision and white-box machine learning techniques Artículo académico uri icon

Abstracto

  • The quality of beef products relies on the presence of a cherry red color, as any deviation toward brownish tones indicates a loss in quality. Existing studies typically analyze individual color channels separately, establishing acceptable ranges. In contrast, our proposed approach involves conducting a multivariate analysis of beef color changes using white-box machine learning techniques. Our proposal encompasses three phases. (1) We employed a Computer Vision System (CVS) to capture the color of beef pieces, implementing a color correction pre-processing step within a specially designed cabin. (2) We examined the differences among three color spaces (RGB, HSV, and CIELab*) (3) We evaluated the performance of three white-box classifiers (decision tree, logistic regression, and multivariate normal distributions) for predicting color in both fresh and non-fresh beef. These models demonstrated high

fecha de publicación

  • 2023

Palabras clave

  • Beef color Meat
  • Computer vision system
  • Meat quality
  • White-box machine learning

Volumen

  • 9

Cuestión

  • 7