Given a signal sparse in a redundant frame, how to recover it with substantially undersampled linear measurements? The redundant frame component adds complexity to the problem. We will survey current results, list some fundamental problems that need to be solve, and present new results on both deterministic and random measurements. We show that subgaussian measurements achieve the minimum number of measurements and these results complement the compressed sensing literature.
6月14日
3:30pm - 4:30pm
地点
Room 4504, Academic Building, (Lifts 25-26)
讲者/表演者
Prof. Xuemei Chen
Department of Mathematical Sciences, New Mexico State University
主办单位
Department of Mathematics
联系方法
mathseminar@ust.hk
付款详情
对象
Alumni, Faculty and Staff, PG Students, UG Students
语言
英语
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