平均或不平均:带噪声测量的压缩感知中的权衡

Kei Sano, Ryosuke Matsushita, Toshiyuki TANAKA
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引用次数: 2

摘要

我们考虑了带噪声的稀疏向量压缩感知中测量总数有限的情况。在这种情况下,在获取尽可能多的独立观测值和对几个相同的测量值进行平均以提高信噪比之间存在权衡。借助近似消息传递算法来解决LASSO问题,我们通过状态演化证明,为了最小化估计误差,应该执行尽可能多的独立线性测量,而不是执行平均来提高观测值的信噪比。此外,我们已经通过数值实验证实,在测量矩阵由离散傅里叶矩阵的随机子采样行构建的情况下,情况也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
To average or not to average: Trade-off in compressed sensing with noisy measurements
We consider the situation where the total number of measurements is limited in compressed sensing of sparse vectors with noisy measurements. In this situation there is a trade-off between acquiring as many independent observations as possible and performing averaging over several identical measurements in order to improve signal-to-noise ratio. With the help of the approximate message passing algorithm to solve LASSO problems, we have proved, via state evolution, that in order to minimize estimation errors one should perform as many independent linear measurements as possible rather than performing averaging to improve signal-to-noise ratio of the observations. Furthermore, we have confirmed via numerical experiments that the same holds in the case where the measurement matrix is constructed by randomly subsampling rows of a discrete Fourier matrix.
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