2016
DOI: 10.1587/transinf.2016edl8101
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Combining Fisher Criterion and Deep Learning for Patterned Fabric Defect Inspection

Abstract: SUMMARYIn this letter, we propose a novel discriminative representation for patterned fabric defect inspection when only limited negative samples are available. Fisher criterion is introduced into the loss function of deep learning, which can guide the learning direction of deep networks and make the extracted features more discriminating. A deep neural network constructed from the encoder part of trained autoencoders is utilized to classify each pixel in the images into defective or defectless categories, usi… Show more

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Cited by 5 publications
(7 citation statements)
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“…The above results indicate that RCMRDE can more thoroughly detect the dynamic mutation of the bearing fault signal. Subsequently, the JMIM is compared with Fisher [48] and LS [49]. Figure 14 illustrates the diagnostic accuracy of the 3 methods.…”
Section: Diagnosis Results and Analysismentioning
confidence: 99%
See 1 more Smart Citation
“…The above results indicate that RCMRDE can more thoroughly detect the dynamic mutation of the bearing fault signal. Subsequently, the JMIM is compared with Fisher [48] and LS [49]. Figure 14 illustrates the diagnostic accuracy of the 3 methods.…”
Section: Diagnosis Results and Analysismentioning
confidence: 99%
“…To further evaluate the presented method, some machine learning algorithms, such as KNN, BPNN, and SVM, were selected for comparison. In total, the proposed method Subsequently, the JMIM is compared with Fisher [48] and LS [49]. Figure 14 illustrates the diagnostic accuracy of the 3 methods.…”
Section: Comparison With Other Methodsmentioning
confidence: 99%
“…Since Hinton [ 35 , 36 ] proposed a greedy layer-wise pre-training algorithm to initialize the weights of deep architectures, artificial neural networks have been revived. Deep neural networks have become a new popular topic and advanced in image classification, object tracking [ 37 ] and recognition [ 38 ], gesture recognition [ 39 ], action recognition [ 40 ], defect inspection [ 41 , 42 , 43 , 44 ], voice recognition, natural language understanding, etc. Popular deep learning frameworks include stacked autoencoders, convolutional neural networks, and restricted Boltzmann machine.…”
Section: Proposed Methodsmentioning
confidence: 99%
“…Learning-based approaches, especially methods with deep neural network architectures, are very promising for defect inspection. In recent years, there have been many studies that have investigated this field and explored better strategies for defect inspection [ 20 , 21 , 22 , 23 ]. However, the majority of these studies use supervised learning, which often requires large amounts of labeled defective samples for model training [ 23 ].…”
Section: Related Work and Foundationsmentioning
confidence: 99%