多通道压缩感知中充分稀疏源的盲分离

Hongwei Xu, Ning Fu, Congru Yin, Liyan Qiao, Xiyuan Peng
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引用次数: 0

摘要

传统的盲源分离方法几乎都是基于奈奎斯特采样理论。近年来,压缩感知(CS)理论被应用于BSS,因为信号的信息可以在相对较少的线性投影中保存。传统的压缩BSS方法主要包括两个步骤:从压缩观测中恢复混合信号和从恢复的混合信号中分离源信号。本文提出了一种从压缩感测线性混合中同时分离和重建充分稀疏源的新框架。与传统的压缩BSS相比,该方法降低了对采样速度和设备运行率的要求。此外,我们的方法具有更好的重建效果。仿真结果表明,该算法能够成功地分离出足够稀疏的多通道信源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind separation of sufficiently sparse sources in multichannel compressed sensing
Conventional approaches for blind source separation (BSS) are almost based on the Nyquist sampling theory. Recently, compressed sensing (CS) theory is applied to BSS for the fact that the information of a signal can be preserved in a relatively small number of linear projections. The traditional method for compressive BSS mainly involves two steps: recovering mixed signals from compressed observations and separating source signals from the recovered mixed signals. This paper presents a novel framework for separating and reconstructing the sufficiently sparse sources from compressively sensed linear mixtures simultaneously. Compared with the traditional compressive BSS, the proposed approach can reduce the requirements of sampling speed and operating rate of the devices. Moreover, our approach has better reconstruction results. Simulation results demonstrate the proposed algorithm can separate multichannel sufficiently sparse sources successfully.
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