Nonconvex Robust High-Order Tensor Completion Using Randomized Low-Rank Approximation. uri icon

abstract

  • Within the tensor singular value decomposition (T-SVD) framework, existing robust low-rank tensor completion approaches have made great achievements in various areas of science and engineering. Nevertheless, these methods involve the T-SVD based low-rank approximation, which suffers from high computational costs when dealing with large-scale tensor data. Moreover, most of them are only applicable to third-order tensors. Against these issues, in this article, two efficient low-rank tensor approximation approaches fusing random projection techniques are first devised under the order-d ( d 3 ) T-SVD framework. Theoretical results on error bounds for the proposed randomized algorithms are provided. On this basis, we then further investigate the robust high-order tensor completion problem, in which a double nonconvex model along with its corresponding fast optimization algorithms with convergence guarantees are developed. Experimental results on large-scale synthetic and real tensor data illustrate that the proposed method outperforms other state-of-the-art approaches in terms of both computational efficiency and estimated precision.

published proceedings

  • IEEE Trans Image Process

author list (cited authors)

  • Qin, W., Wang, H., Zhang, F., Ma, W., Wang, J., & Huang, T.

complete list of authors

  • Qin, Wenjin||Wang, Hailin||Zhang, Feng||Ma, Weijun||Wang, Jianjun||Huang, Tingwen

publication date

  • January 2024