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Detecting track-loss for the Probabilistic Data Association Filter in the absence of truth data

机译:在没有真实数据的情况下为概率数据关联过滤器检测磁迹损耗

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Of significant interest in the practical application of data association algorithms to target tracking in cluttered environments is how to determine track-loss in the absence of truth data. An approach is laid out for the Probabilistic Data Association Filter (Bar-Shalom and Fortmann, 1988) where the predicted measurement innovations covariance is used to define nominal "tracking" and "track-lost" regimes, and the sample variance of the "effective" filter innovations (prediction errors) is the metric used to determine the regime in a two-class decision rule. A major advantage of this method is that confidence intervals can be placed on the probabilities of both correctly and incorrectly identifying the regimes. Theoretical approximations of the conditional mean and distribution of the sample innovations variance in the tracking and track-lost regimes are proposed for use in construction of the decision rule. Simulation results demonstrating the method are provided.
机译:在杂乱环境中将数据关联算法用于目标跟踪的实际应用中,人们非常感兴趣的是如何在缺少真相数据的情况下确定磁迹丢失。为概率数据关联过滤器(Bar-Shalom和Fortmann,1988)提出了一种方法,其中预测的测量创新协方差用于定义名义上的“跟踪”和“跟踪丢失”状态,以及“有效”的样本方差。过滤器创新(预测错误)是用于确定两类决策规则中制度的指标。此方法的主要优点是,可以将置信区间放在正确和错误地识别方案的概率上。提出了条件均值的理论近似和样本创新偏差方差在跟踪和轨道丢失模式下的分布,以用于决策规则的构建。提供了证明该方法的仿真结果。

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