Sudocodesߝ稀疏信号的快速测量与重构

S. Sarvotham, D. Baron, Richard Baraniuk
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引用次数: 133

摘要

数码是一种对稀疏信号进行无损压缩采样和重构的新方法。考虑一个稀疏信号xisin RopfN只包含K Lt N个非零值。sudo编码通过线性矩阵向量乘法y = Phix计算码字,其中K < M Lt N.我们提出了一个仅包含值0和1的稀疏Phi的非自适应构造;因此,y的计算只涉及x元素子集的和。伴随的sudodecoding策略有效地恢复给定y的x。Sudocodes只需要M = O(Klog(N))个测量值就可以精确重建,最坏情况的计算复杂度为O(Klog(K) log(N))。sudocode可以作为实值数据的擦除码,在点对点网络和分布式数据存储系统中具有潜在的应用前景。它们也很容易扩展到在任意基中稀疏的信号
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sudocodes ߝ Fast Measurement and Reconstruction of Sparse Signals
Sudocodes are a new scheme for lossless compressive sampling and reconstruction of sparse signals. Consider a sparse signal x isin RopfN containing only K Lt N non-zero values. Sudo-encoding computes the codeword via the linear matrix-vector multiplication y = Phix, with K < M Lt N. We propose a non-adaptive construction of a sparse Phi comprising only the values 0 and 1; hence the computation of y involves only sums of subsets of the elements of x. An accompanying sudodecoding strategy efficiently recovers x given y. Sudocodes require only M = O(Klog(N)) measurements for exact reconstruction with worst-case computational complexity O(Klog(K) log(N)). Sudocodes can be used as erasure codes for real-valued data and have potential applications in peer-to-peer networks and distributed data storage systems. They are also easily extended to signals that are sparse in arbitrary bases
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