Almost exact threshold calculations for covariance absolute value detection algorithm

V. Upadhya, D. Jalihal
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引用次数: 7

Abstract

Design of robust test statistics which mitigate the channel and noise uncertainties are the essential requirement of detection applications. Covariance absolute value (CAV) detection is one of the non-parametric detection methods which claims robustness [1]. Achieving the theoretical probability of detection performance depends on the accuracy in calculating the thresholding parameter, which in turn depends on the distribution of the test statistic under the null hypothesis. Since the exact analysis of distribution is cumbersome, approximation techniques are used. We present approximation techniques which achieve performance very close to the one obtained from exact distribution of the test statistic (using Monte-Carlo simulation). Further, an equivalent test statistic compared to CAV is proposed which uses the Bartlett decomposition of the sample covariance matrix and its performance is compared with CAV. The robustness of the proposed test statistic is verified for the noise uncertainty model assumed [2].
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几乎精确阈值计算的协方差绝对值检测算法
设计鲁棒的测试统计量以减轻信道和噪声的不确定性是检测应用的基本要求。协方差绝对值(Covariance absolute value, CAV)检测是一种具有鲁棒性的非参数检测方法[1]。检测性能的理论概率的实现取决于阈值参数的计算精度,而阈值参数的计算精度又取决于原假设下检验统计量的分布。由于对分布的精确分析很麻烦,所以使用了近似技术。我们提出了近似技术,其性能非常接近于从测试统计量的精确分布(使用蒙特卡罗模拟)获得的性能。进一步,利用样本协方差矩阵的Bartlett分解,提出了一种与CAV相比的等效检验统计量,并将其性能与CAV进行了比较。对于假设的噪声不确定性模型[2],验证了所提出的检验统计量的鲁棒性。
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