基于压缩感知的稀疏二值信号重构

Jiangtao Wen, Zhuoyuan Chen, Shiqiang Yang, Yuxing Han, J. Villasenor
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引用次数: 0

摘要

本文描述了一种利用压缩感知重构稀疏二值信号的改进算法。该算法基于\cite{04}的重新加权$l_q$范数优化算法,但在每轮内点法迭代中增加了重要的边界运算,并对$q$进行了逐步约简。实验结果证实,该算法在恢复输入信号的能力和速度方面都表现良好。我们还发现,渐进式减少和边界对性能的改进都是不可或缺的。
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Reconstruction of Sparse Binary Signals Using Compressive Sensing
This paper has described an improved algorithm for reconstructing sparse binary signals using compressive sensing. The algorithm is based on the reweighted $l_q$ norm optimization algorithm of \cite{04}, but with the important additional operation of bounding in each round of the interior-point method iteration, and progressive reduction of $q$. Experimental results confirm that the algorithm performs well both in terms of the ability to recover an input signal as well as in terms of speed. We also found that both the progressive reduction and the bounding are integral to the improvement in performance.
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