Fabric Defect Detection Using Deep Convolutional Neural Network

The enormous growth in the fashion industry increased the demand for quality of service of the fabric material. Fabric defect detection plays a crucial role in maintaining the quality of service as a single defect in the fabric can halve its price. Traditional machine learning approaches are less ge...

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Veröffentlicht in:Optical memory & neural networks 2021-07, Vol.30 (3), p.250-256
Hauptverfasser: Biradar, Maheshwari S., Shiparamatti, B. G., Patil, P. M.
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Sprache:eng
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Zusammenfassung:The enormous growth in the fashion industry increased the demand for quality of service of the fabric material. Fabric defect detection plays a crucial role in maintaining the quality of service as a single defect in the fabric can halve its price. Traditional machine learning approaches are less generalized and cannot be employed for fabric defect detection of patterned as well as non-patterned fabrics. This paper presents Deep Convolutional Neural Network (DCNN) for fabric defect detection. The proposed method consists of a three-layered DCNN for the representation of the normal and defected fabric patch. The performance of the proposed DCNN is evaluated on the standard TILDA and in-house database using percentage accuracy. It is noticed that the proposed method gives an accuracy of 98.33 and 90.39% for patterned and non-patterned fabric defect detection for in-house database and 99.06% accuracy for non-patterned TILDA database.
ISSN:1060-992X
1934-7898
DOI:10.3103/S1060992X21030024