利用路网信息改进目标跟踪

U. Orguner, T. Schon, F. Gustafsson
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引用次数: 31

摘要

本文研究了利用路网信息,利用粒子滤波方法对既能在公路上运动又能在非公路上运动的目标进行跟踪的问题。有人认为,限制,如速度限制和/或单行道一般纳入道路运动模型使得有必要考虑额外的高带宽越野运动模型。即使考虑到道路地图信息不完善和司机违反交通规则的可能性,被考虑的目标只允许在道路上移动也是如此。目前使用的粒子滤波器在急剧模式转换期间挣扎,结果是估计质量差。这是由于分配给每个运动模式的粒子数量根据模式概率而变化。将一种新提出的相互作用多模型(IMM)粒子滤波算法应用于该问题,该算法使每个模式中的粒子数保持不变,而与模式概率无关,并将其性能与已有算法进行了比较。在具有挑战性的纯方位跟踪场景下的仿真结果表明,与现有算法不同,该算法即使在最剧烈的模式转换下也能取得良好的性能。
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Improved target tracking with road network information
In this paper we consider the problem of tracking targets, which can move both on-road and off-road, with particle filters utilizing the road-network information. It is argued that the constraints like speed-limits and/or one-way roads generally incorporated into on-road motion models make it necessary to consider additional high-bandwidth off-road motion models. This is true even if the targets under consideration are only allowed to move on-road due to the possibility of imperfect road-map information and drivers violating the traffic rules. The particle filters currently used struggles during sharp mode transitions, with poor estimation quality as a result. This is due to the fact the number of particles allocated to each motion mode is varying according to the mode probabilities. A recently proposed interacting multiple model (IMM) particle filtering algorithm, which keeps the number of particles in each mode constant irrespective of the mode probabilities, is applied to this problem and its performance is compared to a previously existing algorithm. The results of the simulations on a challenging bearing-only tracking scenario show that the proposed algorithm, unlike the previously existing algorithm, can achieve good performance even under the sharpest mode transitions.
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