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Low Rank Tensor Completion with Poisson Observations
时间:2021年04月19日 07:52 点击数:

报告人:张雄军

报告地点:腾讯会议

报告时间:2021年04月22日星期四14:00-15:00

邀请人:刘俊

报告摘要:

Poisson observations for videos are important models in video processing and computer vision. In this talk, we study the third-order tensor completion problem with Poisson observations. The main aim is to recover a tensor based on a small number of its Poisson observation entries. A existing matrix-based method may be applied to this problem via the matricized version of the tensor. However, this method does not leverage on the global low-rankness of a tensor and may be substantially suboptimal. Our approach is to consider the maximum likelihood estimate of the Poisson distribution, and utilize the Kullback-Leibler divergence for the data-fifitting term to measure the observations and the underlying tensor. Moreover, we propose to employ a transformed tensor nuclear norm ball constraint and a bounded constraint of each entry, where the transformed tensor nuclear norm is used to get a lower transformed multi-rank tensor with suitable unitary transformation matrices. We show that the upper bound of the error of the estimator of the proposed model is less than that of the existing matrix-based method. Also an information theoretic lower error bound is established. An alternating direction method of multipliers is developed to solve the resulting convex optimization model. Extensive numerical  experiments on synthetic data and real-world datasets are presented to demonstrate the effectiveness of our proposed model compared with existing tensor completion methods.

会议ID:418 482 711

主讲人简介:

张雄军, 华中师范大学数学与统计学学院副教授。2017年博士毕业于湖南大学, 2015年11月-2016年11月香港浸会大学博士交换生, 2020年-2021年香港大学博士后。 目前主持国家自然科学基金青年基金和湖北省自然科学基金青年各一项。 2019年获湖南省优秀博士学位论文。主要研究方向包括图像处理、张量优化、机器学习, 目前已在IEEE Trans. Pattern Analysis and Machine Intelligence, SIAM J. Image Sciences, SIAM J. Scientific Computing, IEEE Trans. Neural Networks and Learning Systems, Inverse Problems等期刊发表论文近20篇。

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