学术活动

Robust Tensor Recovery via A Nonconvex Approach with Ket Augmentation and Auto-Weighted Strategy

2024-05-07 13:31

报告人: 凌晨

报告人单位: 杭州电子科技大学

时间: 2024年5月11日 上午9:00—10:00

地点: 卫津路校区6-121

开始时间: 2024年5月11日 上午9:00—10:00

报告人简介: 教授

年:

日月:

In this talk, we introduce a nonconvex tensor recovery approach, which employs the powerful ket augmentation technique to expand a low order tensor into a high-order one so that we can exploit the advantage of tensor train (TT) decomposition tailored for high-order tensors. Moreover, we define a new nonconvex surrogate function to approximate the tensor rank, and develop an auto-weighted mechanism to adjust the weights of the resulting high-order tensor’s TT ranks. To make our approach robust, we add two modeunfolding regularization terms to enhance the model for the purpose of exploring spatio-temporal continuity and self-similarity of the underlying tensors. Also, we propose an implementable algorithm to solve the proposed optimization model in the sense that each subproblem enjoys a closed-form solution. A series of numerical results demonstrate that our approach works well on recovering color images and videos.

报告人简介:凌晨 : 杭州电子科技大学理学院(二级)教授,博士生导师。曾任:杭州电子科技大学理学院院长、中国运筹学会数学规划分会副理事长、中国经济数学与管理数学研究会副理事长、中国运筹学会理事、中国系统工程学会理事、浙江省数学会常务理事、浙江省教育厅数学教育指导委员会委员(第一、二届)等。现任国际期刊 Pacific Journal of Optimization编委、Statistics, Optimization & Information Computing编委。近十余年来,连续主持国家自科基金和浙江省自科基金各4项(其中含省基金重点项目1项)。成果发表在SCIENCE CHINA-Mathematics、Math. Program.、SIAM J. Optim.、SIAM J.Matrix Anal.and Appl.、J.Sci.Comput.、Comput.Optim.Appl.、J.Optim.Theory Appl.、J.Global Optim.、Appl.Math.Comput.等国内外重要刊物


Contact us

Add:Building 58, The School of Mathematics, Tianjin University Beiyangyuan Campus,

        No. 135, Ya Guan Road, Jinnan District, Tianjin, PRC 

Tel:022-60787827   Mail:math@tju.edu.cn

Baidu
sogou