Exploring the Applications of Textural Features for Automatic Leather Characterization
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Vysoká škola báňská - Technická univerzita Ostrava
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Abstract
This paper examines the significance of tex-
tural features in digital images of leather samples for
automated visual quality inspection in industrial produc-
tion. Leather defect detection involves tackling two im-
portant challenges: first, accurately isolating the leather
surface from the background in the acquired images, and
second, conducting a detailed analysis of the extracted
region to identify and classify potential defects. This
study investigates the potential of textural descriptors
for leather characterization, exploring their application
as feature vectors in both supervised and unsupervised
machine learning methods. We evaluate these meth-
ods on two tasks: distinguishing between the leather
surface and background in acquired images, and classi-
fying leather defects. As anticipated, supervised methods
demonstrate superior performance, achieving over 98%
accuracy in leather-background separation and up to 90%
in defect classification. In contrast, the unsupervised
approach yields more modest results, with Rand Index
and Fowlkes-Mallows Index values of 81% and 73%,
respectively. Despite the limitations of textural descrip-
tors in leather defect classification, the results highlight
the potential of texture analysis and unsupervised learn-
ing in automating image analysis and enhancing quality
control in leather production.
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Subject(s)
Texture analysis, leather defect classification, supervised and unsupervised machine learning, foreground-background segmentation
Citation
Advances in electrical and electronic engineering. 2025, vol. 23, no. 4, pp. 302 – 312 : ill.