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SNR threshold region prediction via singular value decomposition of the Barankin bound kernel

机译:通过Barankin约束核的奇异值分解来预测SNR阈值区域

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Engineers are often interested in characterizing estimator performance for all possible SNR operating points. The Crámer-Rao lower bound (CRLB) is known to provide a tight lower bound on estimator mean-squared error (MSE) under asymptotic conditions associated with high SNR and/or large data lengths. The maximum likelihood estimator (MLE), a compact function, is known to exhibit the so-called threshold phenomenon in non-linear estimation problems. This threshold region is associated with the MLE selecting side-lobes over the main-lobe with high probability. Therefore, it is important to be able to determine the threshold SNR value past which the performance of the MLE rapidly deviates from the CRLB where small changes in SNR can produce large changes in MSE. One approach for predicting the SNR threshold is based on the computation of the Barankin bound (BB) that can provide a tighter bound than the CRLB on estimator performance. In this paper, we propose a threshold prediction algorithm based on the effective rank of the BB kernel matrix computed via singular value decomposition (SVD). We demonstrate the proposed prediction technique for the time-delay, frequency, and angle of arrival sensing problems and compare to other known prediction techniques from the literature.
机译:工程师通常对表征所有可能的SNR工作点的估计器性能感兴趣。已知Crámer-Rao下限(CRLB)在与高SNR和/或大数据长度相关的渐近条件下,可提供估计器均方误差(MSE)的严格下限。最大似然估计器(MLE)是一种紧凑函数,已知在非线性估计问题中表现出所谓的阈值现象。该阈值区域与MLE高概率地选择主瓣上的旁瓣相关。因此,重要的是能够确定SNR阈值,超过此阈值,MLE的性能将迅速偏离CRLB,而SNR的小变化会导致MSE的大变化。一种预测SNR阈值的方法是基于Barankin边界(BB)的计算,该模型在估计器性能上可以提供比CRLB更严格的边界。在本文中,我们提出了一种基于奇异值分解(SVD)计算的BB核矩阵的有效秩的阈值预测算法。我们演示了建议的预测技术的时间延迟,频率和到达角度的传感问题,并与文献中其他已知的预测技术进行比较。

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