子空间并集中可压缩信号的恢复

Marco F. Duarte, C. Hegde, V. Cevher, Richard Baraniuk
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引用次数: 22

摘要

压缩感知(CS)是一种替代香农/奈奎斯特采样采集稀疏或可压缩信号;我们不是定期取样,而是测量M≪N随机矢量的内部产品,然后通过稀疏寻优或贪婪算法恢复信号。初步研究表明,通过利用比标准稀疏性更强的信号模型,恢复结构化稀疏信号所需的测量次数可以大大低于标准恢复。本文在子空间信号模型并集的基础上,提出了一种结构化可压缩信号的新框架,并给出了恢复可压缩信号的一个新的充分条件,即限制放大特性(RAmP)。RAmP是传统CS的受限等距特性(RIP)的天然对应物。以小波树可压缩信号为例,通过数值仿真验证了该框架的有效性和适用性。
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Recovery of compressible signals in unions of subspaces
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquisition of sparse or compressible signals; instead of taking periodic samples, we measure inner products with M ≪ N random vectors and then recover the signal via a sparsity-seeking optimization or greedy algorithm. Initial research has shown that by leveraging stronger signal models than standard sparsity, the number of measurements required for recovery of an structured sparse signal can be much lower than that of standard recovery. In this paper, we introduce a new framework for structured compressible signals based on the unions of subspaces signal model, along with a new sufficient condition for their recovery that we dub the restricted amplification property (RAmP). The RAmP is the natural counterpart to the restricted isometry property (RIP) of conventional CS. Numerical simulations demonstrate the validity and applicability of our new framework using wavelet-tree compressible signals as an example.
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