Exact Joint Sparse Frequency Recovery via Optimization Methods
Zai Yang, Lihua Xie

TL;DR
This paper introduces a convex optimization approach using atomic norm techniques for exact joint sparse frequency recovery from multiple measurement vectors, improving resolution and measurement efficiency in array processing.
Contribution
It extends atomic norm methods to the joint sparse frequency recovery problem with multiple measurement vectors, providing a convex relaxation and theoretical guarantees for exact recovery.
Findings
Exact recovery under certain conditions
Reduced measurements needed compared to single measurement case
Improved frequency resolution and separation conditions
Abstract
Frequency recovery/estimation from discrete samples of superimposed sinusoidal signals is a classic yet important problem in statistical signal processing. Its research has recently been advanced by atomic norm techniques which exploit signal sparsity, work directly on continuous frequencies, and completely resolve the grid mismatch problem of previous compressed sensing methods. In this work we investigate the frequency recovery problem in the presence of multiple measurement vectors (MMVs) which share the same frequency components, termed as joint sparse frequency recovery and arising naturally from array processing applications. To study the advantage of MMVs, we first propose an norm like approach by exploiting joint sparsity and show that the number of recoverable frequencies can be increased except in a trivial case. While the resulting optimization problem is shown…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Blind Source Separation Techniques · Direction-of-Arrival Estimation Techniques
