压缩感知中的卡尔曼滤波

D. Kanevsky, Avishy Carmi, L. Horesh, P. Gurfil, B. Ramabhadran, Tara N. Sainath
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引用次数: 28

摘要

压缩感知是一个新兴的领域,处理从相对较少的观测值(通常小于信号维度)重建稀疏的,或者更准确地说,是信号的压缩表示。在我们之前的工作中,我们已经展示了如何自然地应用卡尔曼滤波器来获得压缩感知问题的近似贝叶斯解。所得到的算法被称为CSKF,它依赖于一种伪测量技术来执行稀疏性约束。我们的方法提出了两个问题,这在本文中得到了解决。第一个是关于近似技术的有效性。在这方面,我们提供了对CSKF算法的严格处理,该算法得出了精确(在贝叶斯意义上)和近似解之间差异的上界。第二个问题是在大规模设置中与CSKF相关的计算开销。本文提出了一种基于Krylov子空间法的有效测量更新方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kalman filtering for compressed sensing
Compressed sensing is a new emerging field dealing with the reconstruction of a sparse or, more precisely, a compressed representation of a signal from a relatively small number of observations, typically less than the signal dimension. In our previous work we have shown how the Kalman filter can be naturally applied for obtaining an approximate Bayesian solution for the compressed sensing problem. The resulting algorithm, which was termed CSKF, relies on a pseudo-measurement technique for enforcing the sparseness constraint. Our approach raises two concerns which are addressed in this paper. The first one refers to the validity of our approximation technique. In this regard, we provide a rigorous treatment of the CSKF algorithm which is concluded with an upper bound on the discrepancy between the exact (in the Bayesian sense) and the approximate solutions. The second concern refers to the computational overhead associated with the CSKF in large scale settings. This problem is alleviated here using an efficient measurement update scheme based on Krylov subspace method.
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