Low-rank matrix decomposition has shown its capability in many applications such as image in-painting, de-noising, background reconstruction and defect detection etc. In this paper, we consider the texture background of rail track images and the sparse foreground of the defects to construct a low-rank matrix decomposition model with block sparsity for defect inspection of rail tracks, which jointly minimizes the nuclear norm and the 2-1 norm. Similar to ADM, an alternative method is proposed in this study to solve the optimization problem. After image decomposition, the defect areas in the resulting low-rank image will form dark stripes that horizontally cross the entire image, indicating the preciselocations of the defects. Finally, a two-stage defect extraction method is proposed to locate the defect areas. The experimental results of the two datasets show that our algorithm achieved better performance compared with other methods.
CITATION STYLE
Zhang, L., Chen, S., Cen, Y., Cen, Y., Wang, H., & Zeng, M. (2019). Block sparse low-rank matrix decomposition based visual defect inspection of rail track surfaces. KSII Transactions on Internet and Information Systems, 13(12), 6043–6062. https://doi.org/10.3837/tiis.2019.12.014
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