基于超阈值随机共振的非线性检测器性能分析

Vijayendra Mohan Roy, G. V. Anand
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引用次数: 1

摘要

本文介绍了一种基于超阈值随机共振(SSR)现象的非线性检测器。我们首先提出了一个模型(一组1位量化器)来演示SSR现象。然后,我们将其用作常规匹配滤波器的预处理器。我们采用了Neyman-Pearson(NP)检测策略,并比较了匹配滤波器、基于ssr的检测器和最优检测器的性能。虽然所提出的检测器不是最优的,但对于具有重尾的非高斯噪声(细峰态),它比匹配的滤波器表现出更好的性能。在已知噪声为细峰的情况下,而不知道其分布的确切信息,所提出的检测器比匹配的滤波器是更好的选择。
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Performance Analysis of a Suprathreshold Stochastic Resonance Based Nonlinear Detector
In this paper we introduce a nonlinear detector based on the phenomenon of suprathreshold stochastic resonance (SSR). We first present a model (an array of 1-bit quantizers) that demonstrates the SSR phenomenon. We then use this as a pre-processor to the conventional matched filter. We employ the Neyman-Pearson(NP) detection strategy and compare the performances of the matched filter, the SSR-based detector and the optimal detector. Although the proposed detector is non-optimal, for non-Gaussian noises with heavy tails (leptokurtic) it shows better performance than the matched filter. In situations where the noise is known to be leptokurtic without the availability of the exact knowledge of its distribution, the proposed detector turns out to be a better choice than the matched filter.
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