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A modular neural network for direction-of-arrival estimation of two sources

机译:用于两个来源的到达方向估计的模块化神经网络

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This work addresses the problem of estimating the direction-of-arrival (DOA) of two sources using an array of sensors. This problem is mostly useful in radar applications, where we have few targets at each range bin. Super-resolution algorithms, such as maximum likelihood (ML) estimation and multiple signal classification (MUSIC), have been applied to this problem, but the former involves high computation efforts, while the later has poor estimation performance for coherent sources. In this work, we propose a DOA estimation network, named RBF-AML, which combines the approximated ML (AML) estimator and a radial basis function (RBF) neural network (NN). In the proposed RBF-AML network, the entire two dimensional DOA space is divided into multiple sectors covered by RBF experts. The AML function is then used as a mediator among the experts and selects the most suitable one as the final output of the system. The performance of the RBF-AML network for a two coherent sources case in a Y shape array configuration is evaluated. We show that the performance of the RBF-AML network is similar to the performance of the classical AML DOA estimation for various signal-to-noise ratios (SNRs), phase of the correlation coefficient and signal-to-interference ratios (SIRs). Furthermore, the RBF-AML network requires fewer computational efforts than the classical AML DOA estimation and therefore is an attractive choice for real-time applications.
机译:这项工作解决了使用传感器阵列估算两个源的到达方向(DOA)的问题。这个问题在雷达应用中最有用,在雷达应用中,每个测距箱的目标很少。超分辨率算法,例如最大似然(ML)估计和多信号分类(MUSIC),已应用于此问题,但是前者涉及大量计算工作,而后者对相干源的估计性能较差。在这项工作中,我们提出了一个DOA估计网络,称为RBF-AML,它结合了近似的ML(AML)估计器和径向基函数(RBF)神经网络(NN)。在提出的RBF-AML网络中,整个二维DOA空间被RBF专家划分为多个扇区。然后,将AML功能用作专家之间的中介,并选择最合适的功能作为系统的最终输出。对Y形阵列配置中两个相干源案例的RBF-AML网络的性能进行了评估。我们表明,对于各种信噪比(SNR),相关系数的相位和信噪比(SIR),RBF-AML网络的性能与经典AML DOA估计的性能相似。此外,与传统的AML DOA估计相比,RBF-AML网络需要更少的计算工作,因此对于实时应用而言是一个有吸引力的选择。

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