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Progressive mask-oriented unsupervised fabric defect detection under background repair / Shancheng Tang in COLORATION TECHNOLOGY, Vol. 140, N° 3 (06/2024)
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Titre : Progressive mask-oriented unsupervised fabric defect detection under background repair Type de document : texte imprimé Auteurs : Shancheng Tang, Auteur ; Zicheng Jin, Auteur ; Fenghua Dai, Auteur ; Yin Zhang, Auteur ; Shaojun Liang, Auteur ; Jianhui Lu, Auteur Année de publication : 2024 Article en page(s) : p. 422-439 Note générale : Bibliogr. Langues : Anglais (eng) Catégories : Détection de défauts (Ingénierie)
Evaluation
Surfaces -- défauts
Textiles et tissus -- DéfautsTags : 'Progressive Mask Repair Model' (PMRM) Index. décimale : 677 Textiles Résumé : Detection of defects is an essential quality control method in fabric production. Unsupervised deep learning-based reconstruction algorithms have recently been deeply concerned owing to scarce fabric defect samples, high annotation cost, and deficient prior knowledge. Most unsupervised reconstruction models are prone to overfitting and poor generalisation performance, resulting in blurred images, residual defects, and uneven textures in the reconstruction results. On this account, an unsupervised fabric surface defect detection method using the Progressive Mask Repair Model (PMRM) has been developed. Specifically, PMRM with transformer architecture gathers detailed feature information. In order to pay closer attention to the textural properties of fabrics, the model incorporates structural similarity as a constraint in the training stage. In the detection stage, we designate the non-defective area of the fabric image as the background and the defective area as the foreground. Next, a progressive mask is applied to repair the background of the defective area, which avoids defect false detection resulting from the poor reconstruction effect of the traditional reconstruction model in the non-defective area. Finally, image processing methods such as image difference, frequency-tuned salient detection, and threshold binarisation are used to segment the defects. Relative to the other six unsupervised defect detection methods, the proposed scheme increases the F1 score and intersection over union (IoU) by at least 9.34% and 8.49%, respectively. According to the earlier results, PMRM is effective and exhibits superiority. Note de contenu : - RELATED WORKS : Deep learning detection methods - Masking reconstruction for defect detection
- METHODOLOGY : Feature extraction of good fabric surface - Acquisition of defective area mask - Defect segmentation
- EXPERIMENTS : The experimental environment - Datasets - Evaluation metricsDOI : https://doi.org/10.1111/cote.12719 En ligne : https://drive.google.com/file/d/1Ydfhv7bXVZVVwI7_kGNcZ9pszSuq4eUY/view?usp=drive [...] Format de la ressource électronique : Permalink : https://e-campus.itech.fr/pmb/opac_css/index.php?lvl=notice_display&id=40960
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