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Nonlinear Transform Induced Tensor Nuclear Norm for Tensor Completion

Li, Ben-Zheng; Zhao, Xi-Le*; Ji, Teng-Yu; Zhang, Xiong-Jun; Huang, Ting-Zhu
Science Citation Index Expanded
电子科技大学; 西北工业大学

摘要

The linear transform-based tensor nuclear norm (TNN) methods have recently obtained promising results for tensor completion. The main idea of these methods is exploiting the low-rank structure of frontal slices of the targeted tensor under the linear transform along the third mode. However, the low-rankness of frontal slices is not significant under the linear transforms family. To better pursue the low-rank approximation, we propose a nonlinear transform-based TNN (NTTNN). More concretely, the proposed nonlinear transform is a composite transform consisting of the linear semi-orthogonal transform along the third mode and the element-wise nonlinear transform on frontal slices of the tensor under the linear semi-orthogonal transform. The two transforms in the composite transform are indispensable and complementary to fully exploit the underlying low-rankness. Based on the suggested low-rankness metric, i.e., NTTNN, we propose a low-rank tensor completion model. To tackle the resulting nonlinear and nonconvex optimization model, we elaborately design a proximal alternating minimization algorithm and establish the theoretical convergence guarantee. Extensive experimental results on hyperspectral images, multispectral images, and videos show that our method outperforms the linear transform-based state-of-the-art LRTC methods in terms of PSNR, SSIM, SAM values and visual quality.

关键词

Nonlinear transform Tensor nuclear norm Proximal alternating minimization Tensor completion