Abstract

Low-rank tensor completion (LRTC) aims to impute the missing entries from partially observed tensor data, among which low-rankness is of vital importance to get satisfactory results. In this letter, we propose a hierarchical low-rank factorization framework for high-order tensors. For the first layer, the low TR rank is exploited, and for the second layer the low-rankness of each TR core is further considered. With the hierarchical model, the low-rankness of the original tensor can be fully utilized and thus achieving better completion performance. Experimental results on synthetic data and on inpainting tasks using various datasets demonstrate the superior performance and efficiency of our proposed method as compared to the state-of-the-art algorithms.

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