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Compressed sensing with local structure: Uniform recovery guarantees for the sparsity in levels class

机译:具有局部结构的压缩感测:统一的恢复保证了级别级别的稀疏性

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摘要

In compressed sensing, it is often desirable to consider signals possessing additional structure beyond sparsity. One such structured signal model - which forms the focus of this paper - is the local sparsity in levels class. This class has recently found applications in problems such as compressive imaging, multi-sensor acquisition systems and sparse regularization in inverse problems. In this paper we present uniform recovery guarantees for this class when the measurement matrix corresponds to a subsampled isometry. We do this by establishing a variant of the standard restricted isometry property for sparse in levels vectors, known as the restricted isometry property in levels. Interestingly, besides the usual log factors, our uniform recovery guarantees are simpler and less stringent than existing nonuniform recovery guarantees. For the particular case of discrete Fourier sampling with Haar wavelet sparsity, a corollary of our main theorem yields a new recovery guarantee which improves over the current state-of-the-art. (C) 2017 Elsevier Inc. All rights reserved.
机译:在压缩感测中,通常希望考虑具有稀疏性之外的其他结构的信号。一个这样的结构化信号模型-构成本文的重点-是级别类中的局部稀疏性。此类最近在诸如压缩成像,多传感器采集系统和反问题中的稀疏正则化等问题中得到了应用。在本文中,当测量矩阵对应于二次采样的等轴测图时,我们为此类提供了统一的恢复保证。为此,我们为水平矢量建立了稀疏的标准受限等距属性的变体,称为水平受限等距属性。有趣的是,除了通常的对数因子之外,我们的统一恢复保证比现有的非统一恢复保证更简单,更严格。对于具有Haar小波稀疏性的离散傅里叶采样的特殊情况,我们的主定理的推论得出了一个新的恢复保证,它比当前的最新技术有所改进。 (C)2017 Elsevier Inc.保留所有权利。

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