
AbstractModern leather industries are focused on producing high quality leather products for sustaining the market competitiveness. However, various leather defects are introduced during various stages of manufacturing process such as material handling, tanning and dyeing. Manual inspection of leather surfaces is subjective and inconsistent in nature; hence machine vision systems have been widely adopted for the automated inspection of leather defects. It is necessary develop suitable image processing algorithms for localize leather defects such as folding marks, growth marks, grain off, loose grain, and pinhole due to the ambiguous texture pattern and tiny nature in the localized regions of the leather. This paper presents deep learning neural network-based approach for automatic localization and classification of leather defects using a machine vision system. In this work, popular convolutional neural networks are trained using leather images of different leather defects and a class activation mapping technique is followed to locate the region of interest for the class of leather defect. Convolution neural networks such as Google net, Squeeze-net, RestNet are found to provide better accuracy of classification as compared with the state-of-the-art neural network architectures and the results are presented.Graphical Abstract
Artificial neural network, Artificial intelligence, Class (philosophy), Computational Mechanics, FOS: Mechanical engineering, Convolutional neural network, Class activation map, TP1-1185, Pattern recognition (psychology), Fabric Defect Detection in Industrial Applications, Machine vision, Industrial and Manufacturing Engineering, Engineering, Deep Learning, Segmentation, Machine learning, Image (mathematics), Machine learning classifier, Chemical technology, Characterization of Surface Roughness in Optical Components, Mechanical Engineering, Multi class classification, Convolution neural networks, Texture (cosmology), Deep learning, Fabric Defect Detection, Leather defects, Computer science, Process (computing), Operating system, Physical Sciences, Welding Techniques and Residual Stresses, Wafer Map Defect Classification, Texture Analysis, Surface Defect Detection, Computer vision
Artificial neural network, Artificial intelligence, Class (philosophy), Computational Mechanics, FOS: Mechanical engineering, Convolutional neural network, Class activation map, TP1-1185, Pattern recognition (psychology), Fabric Defect Detection in Industrial Applications, Machine vision, Industrial and Manufacturing Engineering, Engineering, Deep Learning, Segmentation, Machine learning, Image (mathematics), Machine learning classifier, Chemical technology, Characterization of Surface Roughness in Optical Components, Mechanical Engineering, Multi class classification, Convolution neural networks, Texture (cosmology), Deep learning, Fabric Defect Detection, Leather defects, Computer science, Process (computing), Operating system, Physical Sciences, Welding Techniques and Residual Stresses, Wafer Map Defect Classification, Texture Analysis, Surface Defect Detection, Computer vision
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