基于压缩测量的凸规划方法的未知和任意稀疏信号检测性能

Chuan Lei, Jun Zhang, Q. Gao
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引用次数: 1

摘要

我们考虑了对背景噪声的任意和未知稀疏信号的检测。在Neyman-Pearson框架下,提出并分析了稀疏估计的似然比检验(LRT-SE)。在高信噪比条件下,LRT-SE的误差概率与信噪比和估计误差有关。在低信噪比条件下,在信噪比上存在一个检测边界,在该边界上LRT-SE可以实现切尔诺夫一致性检测。利用稀疏估计的保真度结果计算检测边界,使信号在信噪比逐渐消失的情况下仍能被检测到。对LRT-SE的误差指数进行了表征,并与假设信号知识的oracle指数进行了比较。数值实验表明,该方法与LRT方法接近,误差概率随观测值的增加呈指数衰减。本文的结果在显示稀疏估计技术的性能如何很好地转化为假设检验设置方面也具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of unknown and arbitrary sparse signal detection using convex programming method with compressive measurements
We consider the detection of arbitrary and unknown sparse signals against background noise. Under a Neyman-Pearson framework, a new detection scheme referred to as the likelihood ratio test with sparse estimation (LRT-SE) is proposed and analyzed. The error probability of LRT-SE is characterized with respect to the signal-to-noise ratio (SNR) and the estimation error under the high SNR regime. For the low SNR regime, it is shown that there exists a detection boundary on the SNR, above which Chernoff-consistent detection is achievable for LRT-SE. The detection boundary can be calculated using fidelity results on the sparse estimation, and it allows the signal to be consistently detected under vanishing SNR. The error exponent of LRT-SE is also characterized and compared with the oracle exponent assuming signal knowledge. Numerical experiments are used to shown that the proposed method performs in the vicinity of the LRT method and the error probability decays exponentially with the number of observations. Results in this paper also have important implications in showing how well the performance of sparse estimation technique transforms into a hypothesis testing setup.
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