Multiplexed Compressed Sensing for general frequency sparse signals

J. Satyanarayana, A. G. Ramakrishnan
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引用次数: 2

Abstract

Compressed Sensing algorithms have provided feasible and reasonably accurate solutions to the problem of reconstructing signals of which only sub-Nyquist number of samples have been acquired. A framework called MOSAICS for acquiring multiple analog channels using limited number of A/D converters by exploiting CS based undersampling has been proposed in our previous work. In this paper we introduce an improvised reconstruction algorithm into the MOSAICS scheme, which overcomes a limitation in MOSAICS, thereby being able to handle a wider class of signals.
一般频率稀疏信号的多路压缩感知
压缩感知算法为仅获得亚奈奎斯特样本数的信号重构问题提供了可行且合理准确的解决方案。我们在之前的工作中提出了一个名为MOSAICS的框架,用于利用基于CS的欠采样,使用有限数量的A/D转换器获取多个模拟通道。本文在MOSAICS方案中引入了一种临时重建算法,克服了MOSAICS方案的局限性,从而能够处理更广泛的信号类别。
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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