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A Fast Multiple-Source Detection and Localization Array Signal Processing Algorithm Using the Spatial Filtering and ML Approach

机译:基于空间滤波和ML方法的快速多源检测与定位阵列信号处理算法

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We propose a computationally efficient algorithm for detection of multiple signals that also gives a rough estimation of their direction of arrivals (DOAs). The narrowband received signals from a uniform linear array are first filtered by a set of orthogonal filters, e.g., by a fast Fourier transformation, in order to separate the sources into multiple spatial intervals. This transformation converts the complicated multihypothesis problem of source detection and localization into multiple binary hypothesis testing problems. For an additive white Gaussian noise (AWGN) environment, the maximum-likelihood (ML) solution of these interrelated tests requires substantially less computational complexity than that of the multihypothesis problem. For each spatial interval, a binary test detects the presence of a single source and thus gives a rough localization. We employ generalized-likelihood ratio (GLR) tests as the detection criterion, assuming that the number of sources, their power, and the noise variance are all unknown. We also show that the optimal uniformly most powerful invariant (UMPI) detector does not exist. However, we derive a UMPI detector that uses some extra information and as a result provides an upper bound performance for evaluation of any invariant detector. Simulations illustrate that the proposed noniterative GLR test performs efficiently for various number of observed data snapshots and signal-to-noise-ratios (SNR)s, and its performance is comparable to the upper bound performance. We used the proposed algorithm for the initialization of the iterative implementation of the standard ML localization. This combination is a high-resolution localization algorithm with a low computational complexity.
机译:我们提出了一种用于检测多个信号的高效计算算法,该算法还给出了其到达方向(DOA)的粗略估计。首先,通过一组正交滤波器,例如通过快速傅立叶变换,对来自均匀线性阵列的窄带接收信号进行滤波,以便将源分成多个空间间隔。这种转换将源检测和定位的复杂多假设问题转换为多个二元假设测试问题。对于加性高斯白噪声(AWGN)环境,这些相互关联的测试的最大似然(ML)解决方案比多重假设问题所需的计算复杂度要低得多。对于每个空间间隔,二进制测试会检测到单个源的存在,从而给出大致的定位。我们采用广义似然比(GLR)测试作为检测标准,假设信号源的数量,其功率以及噪声方差都未知。我们还表明,不存在最优的统一最强大不变式(UMPI)检测器。但是,我们推导了使用一些额外信息的UMPI检测器,从而为评估任何不变检测器提供了上限性能。仿真表明,所提出的非迭代GLR测试可有效地处理各种数量的观测数据快照和信噪比(SNR),其性能可与上限性能相媲美。我们使用提出的算法来初始化标准ML本地化的迭代实现。这种组合是一种具有较低计算复杂度的高分辨率定位算法。

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