Model-based compressive sensing for signal ensembles

Marco F. Duarte, V. Cevher, Richard Baraniuk
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引用次数: 53

Abstract

Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquiring sparse or compressible signals. Instead of taking N periodic samples, we measure M ≪ N inner products with random vectors and then recover the signal via a sparsity-seeking optimization or greedy algorithm. A new framework for CS based on unions of subspaces can improve signal recovery by including dependencies between values and locations of the signal's significant coefficients. In this paper, we extend this framework to the acquisition of signal ensembles under a common sparse supports model. The new framework provides recovery algorithms with theoretical performance guarantees. Additionally, the framework scales naturally to large sensor networks: the number of measurements needed for each signal does not increase as the network becomes larger. Furthermore, the complexity of the recovery algorithm is only linear in the size of the network. We provide experimental results using synthetic and real-world signals that confirm these benefits.
基于模型的信号集成压缩感知
压缩感知(CS)是一种替代香农/奈奎斯特采样获取稀疏或可压缩信号。我们采用随机矢量测量M≪N个内产品,而不是采集N个周期性样本,然后通过稀疏寻优或贪婪算法恢复信号。一种新的基于子空间并集的CS框架可以通过包含信号显著系数的值和位置之间的依赖关系来提高信号的恢复。在本文中,我们将这个框架扩展到一个常见的稀疏支持模型下的信号集合的采集。新框架为恢复算法提供了理论上的性能保证。此外,该框架可以自然地扩展到大型传感器网络:每个信号所需的测量数量不会随着网络变大而增加。此外,恢复算法的复杂度仅与网络的大小成线性关系。我们提供了使用合成信号和实际信号的实验结果来证实这些好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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