Title of article :
Apply Optimized Tensor Completion Method by Bayesian CP-Factorization for Image Recovery
Author/Authors :
Shojaeifard, Ali Reza Department of Mathematics and Statistics - Faculty and Institute of Basic Sciences - Imam Hossein Comprehensive University, Tehran, Iran , Yazdani, Hamid Reza Department of Mathematics and Statistics - Faculty and Institute of Basic Sciences - Imam Hossein Comprehensive University, Tehran, Iran , Shahrezaee, Mohsen Department of Defense and Engineering - Imam Hossein Comprehensive University, Tehran, Iran
Abstract :
In this paper, we are going to analyze big data (embedded in the digital images) with new methods of tensor completion (TC). The determination of tensor ranks and the type of decomposition are significant and essential matters. For defeating these problems, Bayesian CP-Factorization (BCPF) is applied to the tensor completion problem. The BCPF can optimize the type of ranks and decomposition for achieving
the best results. In this paper, the hybrid method is proposed by integrating BCPF
and general TC. The tensor completion problem was briefly introduced. Then, based
on our implementations, and related sources, the proposed tensor-based completion
methods emphasize their strengths and weaknesses. Theoretical, practical, and
applied theories have been discussed and two of them for analyzing big data have
been selected, and applied to several examples of selected images. The results are
extracted and compared to determine the method’s efficiency and importance compared to each other. Finally, the future ways and the field of future activity are also presented.
Keywords :
Image recovery , Matrix completion , Optimization problems , Tensor completion , Variational Bayesian inference
Journal title :
Control and Optimization in Applied Mathematics