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Asymptotically Optimal CFAR Detectors

机译:渐近最优CFAR检测器

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This paper investigates the asymptotic optimality of the Constant False Alarm Rate (CFAR) tests obtained using the Minimal Invariant Group (MIG) reduction. We show that the CFAR tests obtained after MIG reduction using the Wald test is a Separating Function Estimation Test (SFET) and that the Generalized Likelihood Ratio Test (GLRT) and the Rao test are asymptotically SFET using Maximum Likelihood Estimation (MLE) under some mild conditions. Thus, they are asymptotically optimal. In order to find an improved test and motivated by the invariance property of the MLE of induced maximal invariant, we maximize the asymptotic Probability of Detection of the SFET using the MLE after reduction. We propose a systematic method allowing to derive the asymptotically optimal Separating Function (AOSF). This AOSF is obtained as the Euclidean distance of the transformed parameters under two hypotheses such that the gradient of the transformed parameters is the Cholesky decomposition of the Fisher Information Matrix (FIM), i.e., the FIM is transformed into an identity matrix. Interestingly, the AOSF Estimation Test (AOSFET) using MLE simplifies to the Wald-CFAR wherever the FIM does not depend on the unknown parameters. The simulation results show that the proposed AOSFET usually outperforms the GLRT, Wald test and Rao test.
机译:本文研究使用最小不变组(MIG)减少获得的恒定误报率(CFAR)测试的渐近最优性。我们表明,使用Wald检验在MIG降低后获得的CFAR检验是分离函数估计检验(SFET),而在最大的可能性下,使用最大似然估计(MLE)的广义似然比检验(GLRT)和Rao检验是渐近SFET条件。因此,它们是渐近最优的。为了找到一种改进的测试,并以最大诱导不变性的MLE不变性为动力,我们在还原后使用MLE将SFET检测的渐近概率最大化。我们提出了一种系统的方法,允许导出渐近最优分离函数(AOSF)。在两个假设下获得该AOSF作为转换参数的欧几里得距离,以使转换参数的梯度是Fisher信息矩阵(FIM)的Cholesky分解,即FIM被转换为一个单位矩阵。有趣的是,无论FIM不依赖于未知参数如何,使用MLE的AOSF估计测试(AOSFET)都可以简化为Wald-CFAR。仿真结果表明,所提出的AOSFET通常优于GLRT,Wald测试和Rao测试。

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