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Estimation of heavy-tailed clutter density using adaptive RBF network

机译:基于自适应RBF网络的重尾杂波密度估计

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In this paper, a method for estimating clutter density using radial basis function (RBF) network is described. Clutter density is important parameter for data association techniques in single and multitarget scenarios. K-distribution is widely accepted model of heavy-tailed sea clutter, however, estimating its parameters using traditional method of moments (MM) or maximum likelihood (ML) approach require computationally intense task. Instead of this, a non-parametric approach is used (density is directly estimated, based on samples in validation volume of tracked target). During tracking process, returns from target and clutter are clustered using Linde, Buzo and Gray (LBG) algorithm, with fixed number of clusters and minimum distance criterion. Based on representative kernel of each cluster, density is constructed and integrated in Viterbi data association filter that also provides a track quality output. Since densities based under target-present and clutter-present hypothesis are available, corresponding likelihood ratios can be used to further discriminate target from clutter and thus enhance tracking process. Although the method for estimating clutter density is described using single target scenario, it is applicable to multitarget case e.g. using multihypothesis Viterbi filter.
机译:本文介绍了一种使用径向基函数(RBF)网络估算杂波密度的方法。杂波密度是单目标和多目标方案中数据关联技术的重要参数。 K分布是重尾海杂波的公认模型,但是,使用传统的矩量法(MM)或最大似然法(ML)估算其参数需要大量计算工作。取而代之的是,使用非参数方法(根据跟踪目标的验证体积中的样本直接估算密度)。在跟踪过程中,使用林德,布佐和格雷(LBG)算法对目标和杂波的收益进行聚类,并具有固定数量的聚类和最小距离准则。基于每个群集的代表性内核,可以构建密度并将其集成到Viterbi数据关联过滤器中,该过滤器还可以提供跟踪质量输出。由于基于目标存在和混乱存在假设的密度是可用的,因此可以使用相应的似然比进一步区分目标与混乱,从而增强跟踪过程。尽管使用单个目标场景描述了用于估计杂波密度的方法,但是该方法适用于例如多目标情况。使用多假设维特比滤波器。

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