Abstract
In this paper, we propose a framework of non-convex low-rank recovery and alignment for arbitrary tensor data. Specially, by using Schatten-p (\(0<p<1\), the same below) norm and \(\ell _p\) norm to relax the rank function and \(\ell _0\) norm respectively, the model requires much weaker incoherence conditions to guarantee a successful recovery than the common used nuclear norm and \(\ell _1\) norm. At the same time, we adopt a set of transformations which acts on the images of the tensor data to compensate the possible misalignments of images. By solving the optimal transformations, the strict alignments of the images are achieved in the low-rank recovery process. Furthermore, we propose an efficient algorithm based on the method of Alternating Direction Method of Multipliers (ADMM) for the non-convex optimization problem. The extensive experiments on the artificial data sets and real image data sets show the superiority of our method in image alignment and denoising.
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Acknowledgement
This work is supported by NSFC (Grants nos. 61305035, 61472285, 61511130084, and 61503263), Zhejiang Provincial Natural Science Foundation (Grants nos. LY17F030004, LR17F030001, LY16F020023, LY12F03016), Project of science and technology plans of Zhejiang Province (Grants nos. 2014C31062, 2015C31168). Project of science and technology plans of Wenzhou (Grants No. G20150017).
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Zhang, K., Wang, D., Zhang, X., Gu, N., Jiang, H., Ye, X. (2017). Low-Rank Tensor Recovery and Alignment Based on \(\ell _p\) Minimization. In: Chen, CS., Lu, J., Ma, KK. (eds) Computer Vision – ACCV 2016 Workshops. ACCV 2016. Lecture Notes in Computer Science(), vol 10116. Springer, Cham. https://doi.org/10.1007/978-3-319-54407-6_7
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DOI: https://doi.org/10.1007/978-3-319-54407-6_7
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