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Coalescence-avoiding joint probabilistic data association based on bias removal

机译:基于偏差消除的避免聚结联合概率数据关联

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In order to deal with the track coalescence problem of the joint probabilistic data association (JPDA) algorithm, a novel approach from a state bias removal point of view is developed in this paper. The factors that JPDA causes the state bias are analyzed, and the direct computation equation of the bias in the ideal case is given. Then based on the definitions of target detection hypothesis and target-to-target association hypothesis, the bias estimation is extended to the general and practical case. Finally, the estimated bias is removed from the state updated by JPDA to generate the unbiased state. The results of Monte Carlo simulations show that the proposed method can handle track coalescence and presents better performance when compared with the traditional methods.
机译:为了解决联合概率数据关联(JPDA)算法的跟踪合并问题,从状态偏差消除的角度出发,提出了一种新的方法。分析了JPDA引起状态偏差的因素,给出了理想情况下偏差的直接计算公式。然后根据目标检测假设和目标与目标关联假设的定义,将偏差估计扩展到一般情况和实际情况。最后,将估计的偏差从JPDA更新的状态中删除以生成无偏差状态。蒙特卡罗模拟的结果表明,与传统方法相比,该方法可以处理轨迹合并,并具有更好的性能。

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