CVMay 14, 2020

Tensor completion via nonconvex tensor ring rank minimization with guaranteed convergence

arXiv:2005.09674v129 citations
AI Analysis

This work addresses tensor completion for applications like image and video processing, offering an incremental improvement over existing methods.

The paper tackles tensor completion by proposing a nonconvex tensor ring rank minimization method using a logdet-based function, which outperforms state-of-the-art competitors in experiments on color images, multispectral images, and color videos with quantitative gains.

In recent studies, the tensor ring (TR) rank has shown high effectiveness in tensor completion due to its ability of capturing the intrinsic structure within high-order tensors. A recently proposed TR rank minimization method is based on the convex relaxation by penalizing the weighted sum of nuclear norm of TR unfolding matrices. However, this method treats each singular value equally and neglects their physical meanings, which usually leads to suboptimal solutions in practice. In this paper, we propose to use the logdet-based function as a nonconvex smooth relaxation of the TR rank for tensor completion, which can more accurately approximate the TR rank and better promote the low-rankness of the solution. To solve the proposed nonconvex model efficiently, we develop an alternating direction method of multipliers algorithm and theoretically prove that, under some mild assumptions, our algorithm converges to a stationary point. Extensive experiments on color images, multispectral images, and color videos demonstrate that the proposed method outperforms several state-of-the-art competitors in both visual and quantitative comparison. Key words: nonconvex optimization, tensor ring rank, logdet function, tensor completion, alternating direction method of multipliers.

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