A single-letter characterization of optimal noisy compressed sensing

Dongning Guo, D. Baron, S. Shamai
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引用次数: 119

Abstract

Compressed sensing deals with the reconstruction of a high-dimensional signal from far fewer linear measurements, where the signal is known to admit a sparse representation in a certain linear space. The asymptotic scaling of the number of measurements needed for reconstruction as the dimension of the signal increases has been studied extensively. This work takes a fundamental perspective on the problem of inferring about individual elements of the sparse signal given the measurements, where the dimensions of the system become increasingly large. Using the replica method, the outcome of inferring about any fixed collection of signal elements is shown to be asymptotically decoupled, i.e., those elements become independent conditioned on the measurements. Furthermore, the problem of inferring about each signal element admits a single-letter characterization in the sense that the posterior distribution of the element, which is a sufficient statistic, becomes asymptotically identical to the posterior of inferring about the same element in scalar Gaussian noise. The result leads to simple characterization of all other elemental metrics of the compressed sensing problem, such as the mean squared error and the error probability for reconstructing the support set of the sparse signal. Finally, the single-letter characterization is rigorously justified in the special case of sparse measurement matrices where belief propagation becomes asymptotically optimal.
最优噪声压缩感知的单字母表征
压缩感知处理从更少的线性测量中重建高维信号,其中信号已知在某个线性空间中具有稀疏表示。随着信号维数的增加,重建所需的测量次数的渐近尺度已经得到了广泛的研究。这项工作从一个基本的角度来推断给定测量的稀疏信号的各个元素的问题,其中系统的维度变得越来越大。使用复制方法,对任何固定的信号元素集合进行推断的结果被证明是渐近解耦的,即,这些元素在测量条件下变得独立。此外,关于每个信号元素的推断问题承认一个单字母表征,即元素的后验分布,它是一个充分的统计量,在标量高斯噪声中与关于同一元素的推断的后验渐近相同。该结果使得压缩感知问题的所有其他基本度量,如均方误差和重建稀疏信号支持集的误差概率,都得到了简单的表征。最后,在稀疏测量矩阵的特殊情况下,单字母表征得到了严格的证明,其中信念传播变得渐近最优。
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