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On Compressive orthonormal Sensing

机译:关于压缩正交感知

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摘要

The Compressive Sensing (CS) approach for recovering sparse signal with orthonormal measurements has been studied under various notions of coherence. However, existing notions of coherence either do not exploit the structure of the underlying signal, or are too complicated to provide an explicit sampling scheme for all orthonormal basis sets. Consequently, there is lack of understanding of key factors that guide the sampling of CS with orthonormal measurements and achieve as low sample complexity as possible. In this paper, we introduce a new notion of π-coherence that exploits both the sparsity structure of the signal and the local coherence. Based on π-coherence, we propose a sampling scheme that is adapted to the underlying true signal and is applicable for CS under all orthonormal basis. Our scheme outperforms (up to a constant factor) existing sampling schemes for orthonormal measurements, and achieves a near-optimal sample complexity (up to certain logarithm factors) for several popular choices of orthonormal basis. Furthermore, we characterize the necessary conditions on the sampling schemes for CS with orthonormal measurements. We then propose a practical multi-phase implementation of our sampling scheme, and verify its advantage over existing sampling schemes via application to magnetic resonance imaging (MRI) in medical science.
机译:在各种相干性概念下,已经研究了使用正交测量恢复稀疏信号的压缩传感(CS)方法。但是,现有的相干性概念要么没有利用基础信号的结构,要么过于复杂而无法为所有正交标准集提供明确的采样方案。因此,对指导正交测量CS采样并实现尽可能低的样本复杂度的关键因素缺乏了解。在本文中,我们引入了一种新的π相干概念,该概念同时利用了信号的稀疏结构和局部相干。基于π相干,我们提出了一种适合于基础真实信号并适用于所有正交的CS的采样方案。对于正交测量,我们的方案优于(高达一个恒定因子)现有的采样方案,并为几种正交选择提供了接近最佳的样本复杂度(高达某些对数因子)。此外,我们通过正交测量来表征CS采样方案的必要条件。然后,我们提出一种实用的多阶段采样方案实施方案,并通过将其应用于医学中的磁共振成像(MRI)来验证其与现有采样方案相比的优势。

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