Neyman-Pearson Detection of Gauss-Markov Signals in Noise: Closed-Form Error Exponent and Properties

Y. Sung, L. Tong, H. Poor
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引用次数: 72

Abstract

The performance of Neyman-Pearson detection of correlated stochastic signals using noisy observations is investigated via the error exponent for the miss probability with a fixed level. Using the state-space structure of the signal and observation model, a closed-form expression for the error exponent is derived, and the connection between the asymptotic behavior of the optimal detector and that of the Kalman filter is established. The properties of the error exponent are investigated for the scalar case. It is shown that the error exponent has distinct characteristics with respect to correlation strength: for signal-to-noise ratio (SNR) > 1 the error exponent decreases monotonically as the correlation becomes stronger, whereas for SNR < 1 there is an optimal correlation that maximizes the error exponent for a given SNR
噪声中高斯-马尔可夫信号的内曼-皮尔逊检测:封闭误差指数及其性质
研究了利用噪声观测对相关随机信号进行内曼-皮尔逊检测的性能,方法是利用固定水平的缺失概率的误差指数。利用信号和观测模型的状态空间结构,导出了误差指数的封闭表达式,并建立了最优检测器的渐近行为与卡尔曼滤波器的渐近行为之间的联系。研究了标量情况下误差指数的性质。结果表明,误差指数在相关强度方面具有明显的特征:对于信噪比(SNR) bbbb1,误差指数随着相关性的增强而单调减小,而对于信噪比< 1,存在一个最优相关性,使给定信噪比的误差指数最大化
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