Detection of varied defects in diverse fabric images via modified RPCA with noise term and defect prior
Author:
Cao Junjie,Wang Nannan,Zhang Jie,Wen Zhijie,Li Bo,Liu Xiuping
Abstract
Purpose
– The purpose of this paper is to present a novel method for fabric defect detection.
Design/methodology/approach
– The method based on joint low-rank and spare matrix recovery, since patterned fabric is manufactured by a set of predefined symmetry rules, and it can be seen as the superposition of sparse defective regions and low-rank defect-free regions. A robust principal component analysis model with a noise term is designed to handle fabric images with diverse patterns robustly. The authors also estimate a defect prior and use it to guide the matrix recovery process for accurate extraction of various fabric defects.
Findings
– Experiments on plain and twill, dot-, box- and star-patterned fabric images with various defects demonstrate that the method is more efficient and robust than previous methods.
Originality/value
– The authors present a RPCA-based model for fabric defects detection, and show how to incorporate defect prior to improve the detection results. The authors also show that more robust detection and less running time can be obtained by introducing a noise term into the model.
Subject
Polymers and Plastics,General Business, Management and Accounting,Materials Science (miscellaneous),Business, Management and Accounting (miscellaneous)
Reference27 articles.
1. Babacan, S.D.
,
Luessi, M.
,
Molina, R.
and
Katsaggelos, A.K.
(2012), “Sparse Bayesian methods for low-rank matrix estimation”,
IEEE Transactions on Signal Processing
, Vol. 60 No. 8, pp. 3964-3977. 2. Cai, J.-F.
,
Candès, E.J.
and
Shen, Z.
(2010), “A singular value thresholding algorithm for matrix completion”,
SIAM Journal on Optimization
, Vol. 20 No. 4, pp. 1956-1982. 3. Candès, E.J.
,
Li, X.
,
Ma, Y.
and
Wright, J.
(2011), “Robust principal component analysis”,
Journal of the ACM
, Vol. 58 No. 3, pp. 11.1-11.37. 4. Chetverikov, D.
(2009), “Residual of resonant SVD as salient feature”, in
Bolc, L
,
Kulikowski, J.L.
and
Wojciechowski, K.
(Eds),
Computer Vision and Graphics
, Springer, Berlin, Heidelberg, pp. 143-153. 5. Chin, R.T.
and
Harlow, C.A.
(1982), “Automated visual inspection: a survey”,
IEEE Transactions on Pattern Analysis and Machine Intelligence
, Vol. 4 No. 6, pp. 557-573.
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