TY - JOUR
T1 - Analysis of physical properties in white and whole wheat sliced bread using digital image processing
AU - Garzon Castro, Claudia Lorena
AU - Filomena Ambrosio, Annamaria
A2 - Martinez Lara, Neiry Dayan
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025/8/8
Y1 - 2025/8/8
N2 - Many studies have addressed the reformulation and preservation of sliced bread, yet the evaluation of its physical properties often demands standardized procedures and extensive manual labor. While advanced techniques such as electron microscopy and microtomography enable microscopic analysis of ingredient interactions, their high-cost limits accessibility. In contrast, digital image analysis provides a rapid and non-invasive alternative for extracting structural information. For this reason, in this study, an algorithm was developed to measure the color, size and morphology of the alveoli from the crumb structure of sliced bread images of two varieties (white and whole). Additionally, a cabin was designed to standardize environmental conditions to measure some variables (color and size), this cabin allows replicate the process to acquired image data. For color measurement, three models (Linear, Polynomial and Stacked Ensemble) were developed to predict CIELAB coordinates from red,
green and blue coordinates. The Stacked Ensemble model obtained a coefficient of determination (R²) of 0.99 and smaller errors in the a* (1.29) and b* (1.57) coordinates. For size, an algorithm based on digital image processing reduced the measurement time by 80% with respect to the manual method, although the asymmetry of the samples generated significant differences in the measurement. Finally, nine variables were established to measure the morphological alveoli features. In this way, the user will not have to apply subjective data analysis techniques, and the algorithm represents a low-cost solution for measure some physicals properties for sliced bread products.
AB - Many studies have addressed the reformulation and preservation of sliced bread, yet the evaluation of its physical properties often demands standardized procedures and extensive manual labor. While advanced techniques such as electron microscopy and microtomography enable microscopic analysis of ingredient interactions, their high-cost limits accessibility. In contrast, digital image analysis provides a rapid and non-invasive alternative for extracting structural information. For this reason, in this study, an algorithm was developed to measure the color, size and morphology of the alveoli from the crumb structure of sliced bread images of two varieties (white and whole). Additionally, a cabin was designed to standardize environmental conditions to measure some variables (color and size), this cabin allows replicate the process to acquired image data. For color measurement, three models (Linear, Polynomial and Stacked Ensemble) were developed to predict CIELAB coordinates from red,
green and blue coordinates. The Stacked Ensemble model obtained a coefficient of determination (R²) of 0.99 and smaller errors in the a* (1.29) and b* (1.57) coordinates. For size, an algorithm based on digital image processing reduced the measurement time by 80% with respect to the manual method, although the asymmetry of the samples generated significant differences in the measurement. Finally, nine variables were established to measure the morphological alveoli features. In this way, the user will not have to apply subjective data analysis techniques, and the algorithm represents a low-cost solution for measure some physicals properties for sliced bread products.
UR - https://www.scopus.com/pages/publications/105012900364
U2 - 10.1007/s44187-025-00568-3
DO - 10.1007/s44187-025-00568-3
M3 - Artículo
SN - 2731-4286
VL - 5
SP - 1
EP - 26
JO - Discover Food
JF - Discover Food
IS - 1
M1 - 261
ER -