Sequential Detection under Correlated Observations using Recursive Method

F. Y. Suratman, Istiqomah Istiqomah, Dien Rahmawati
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Abstract

Sequential analysis has been used in many cases when the decision is supposed to be taken quickly such as for signal detection in statistical signal processing, namely sequential detector. For identical error probabilities, a sequential detector needs a smaller average sample number (ASN) than its counterpart of a fixed sample number quadrature detector based on Neyman-Pearson criteria. The optimum sequential detector was derived based on the assumption that the observations are uncorrelated (independent). However, in realistic scenario, such as in radar, the assumption is commonly violated. Using a sequential detector under correlated observations is sub-optimal and it poses a problem. It demands a high computational complexity, since it needs to recalculate the inverse and the determinant of the signal covariance matrix for each new sample taken. This paper presents a technique for reducing the computational complexity, which involves using recursive matrix inverse to subsequently calculate conditional probability density functions (pdf). This eliminates the need to recalculate the inverse and determinant, leading to a more reasonable solution in real-world scenario. We evaluate the performance of the proposed (recursive) sequential detector by using Monte-Carlo simulations and we use the conventional and non-recursive sequential detectors for comparisons. The results show that the recursive sequential detector has equal probabilities of false alarm and miss-detection with the conventional sequential detector and performs better than the non-recursive sequential detector. In terms of ASN, it maintains comparable results to the two conventional detectors. The recursive approach has reduced the computational complexity for matrix multiplication to   from  and it also has rendered the calculation of matrix determinant to be unnecessary. Therefore, by having better probabilities of error and reduced computational complexities under correlated observations, the proposed recursive sequential detector may become a viable alternative to obtain a more agile detection system as required in future applications, such as in radar and cognitive radio.
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使用递归法进行相关观测下的顺序检测
序列分析被广泛应用于需要快速做出决策的场合,如统计信号处理中的信号检测,即序列检测器。在错误概率相同的情况下,顺序检测器需要的平均样本数(ASN)要小于基于奈曼-皮尔逊准则的固定样本数正交检测器。最佳顺序检测器是在观测数据不相关(独立)的假设基础上得出的。然而,在雷达等现实场景中,这一假设通常会被违反。在相关观测条件下使用顺序检测器是次优的,而且会带来问题。它需要很高的计算复杂度,因为每采集一个新样本,都需要重新计算信号协方差矩阵的逆矩阵和行列式。本文提出了一种降低计算复杂度的技术,即使用递归矩阵求逆来计算条件概率密度函数(pdf)。这样就不需要重新计算逆和行列式,从而在现实世界中获得更合理的解决方案。我们通过蒙特卡洛模拟评估了所提出的(递归)顺序检测器的性能,并使用传统和非递归顺序检测器进行比较。结果表明,递归顺序检测器与传统顺序检测器的误报和漏检概率相等,但性能优于非递归顺序检测器。就 ASN 而言,它与两个传统检测器的结果相当。递归方法降低了矩阵乘法的计算复杂度,也使矩阵行列式的计算变得不必要。因此,所提出的递归顺序检测器在相关观测条件下具有更高的出错概率和更低的计算复杂度,可以成为未来雷达和认知无线电等应用所需的更灵活检测系统的可行替代方案。
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