A blind recovery algorithm for spectrum-sparse signals sub-Nyquist sampling

J. Gai, Ziquan Tong, Shuang Cheng, Junjie Wang, Xu Liu
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引用次数: 2

Abstract

Wideband analog signals push contemporary analog- to-digital conversion systems to their performance limits. The recent development of compressive sensing theory enables direct analog-to-information conversion of sparse (or compressible) signals at sub-Nyquist rate. In this paper, we implement spectrum-sparse signals sub-Nyquist sampling by use of Modulated Wide Converter (MWC). To overcome the drawback of requiring exact sparsity of the existing recovery algorithm, we introduce the Sparsity Adaptive Matching Pursuit (SAMP) method into reconstruction stage to search the support set of unknown signal vectors blindly. The numerical experiments demonstrate that the MWC system with the proposed recovery algorithm can implement spectrum-sparse signals sub-Nyqiust sampling and perfect reconstruction under the condition of not knowing exact sparsity.
频谱稀疏信号亚奈奎斯特采样的盲恢复算法
宽带模拟信号将当代模拟数字转换系统推向其性能极限。压缩感知理论的最新发展使稀疏(或可压缩)信号以亚奈奎斯特速率直接模拟到信息的转换成为可能。本文利用调制宽变换器(MWC)实现了频谱稀疏信号的亚奈奎斯特采样。为克服现有恢复算法要求精确稀疏性的缺点,在重建阶段引入稀疏自适应匹配追踪(SAMP)方法,对未知信号向量的支持集进行盲目搜索。数值实验表明,采用该恢复算法的MWC系统可以在不知道精确稀疏度的情况下实现频谱稀疏信号的亚nyqiust采样和完美重构。
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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