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Direction of arrival tracking in impulsive noise using particle filtering with fractional lower order moment likelihood

机译:使用分数低阶矩似然的粒子滤波在脉冲噪声中跟踪到达方向

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Tracking the direction of arrival (DOA) of an acoustic source in an impulsive noise environment is a challenging problem due to the non-Gaussian characteristic of the noise process. In this paper, a particle filtering (PF) with fractional lower order moment (FLOM) likelihood model is developed to solve this problem. A constant velocity model is employed to model source dynamics and alpha-stable processes are used to model the impulsive noise environment. Since the second order statistics of alpha-stable processes do not exist, the FLOM matrix of the received array data is used to replace the covariance matrix to formulate a spatial spectra based pseudo likelihood. The likelihood is further exponentially weighted to enhance the weight of particles at high likelihood area and thus reduce the effect due to noise. The simulated experiments show that the proposed PF tracking algorithm significantly outperforms the existing PF as well as the Capon likelihood based PF under different impulsive noise environments.
机译:由于噪声过程的非高斯特性,在脉冲噪声环境中跟踪声源的到达方向(DOA)是一个具有挑战性的问题。为了解决这个问题,本文提出了一种具有分数低阶矩(FLOM)似然模型的粒子滤波(PF)。采用恒速模型对源动力学进行建模,并使用α稳定过程对脉冲噪声环境进行建模。由于不存在阿尔法稳定过程的二阶统计量,因此使用接收到的阵列数据的FLOM矩阵替换协方差矩阵,以制定基于空间谱的伪似然性。进一步对似然性进行指数加权,以增加高似然性区域中粒子的重量,从而减少由于噪声引起的影响。仿真实验表明,在不同的脉冲噪声环境下,所提出的PF跟踪算法明显优于现有的PF以及基于Capon似然性的PF。

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