首页> 外文会议>2014 International Conference on Robotics and Mechatronics >Comparison of nearest neighbor and probabilistic data association methods for non-linear target tracking data association
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Comparison of nearest neighbor and probabilistic data association methods for non-linear target tracking data association

机译:非线性目标跟踪数据关联的最近邻和概率数据关联方法比较

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摘要

Target tracking problems are theoretically interesting, because the origins of the measurements are not identified. Data association is one of the key techniques on tracking with radar. The problem of data association for target tracking in a cluttered environment with linear target model and non-linear measurement model will be discussed. Firstly, evidences are constructed based on spherical coordinates. Then, the association decisions are constructed according to nearest neighbor and probabilistic data association methods. The simulation results show that the latter method has better performance than the former. Moreover, the results will be compared to linear target tracking, which is really common in data association techniques and it will be shown that there will be a slight decrease in performance of target tracking with nonlinear measurement model.
机译:从理论上讲,目标跟踪问题很有趣,因为没有识别出测量的起源。数据关联是雷达跟踪的关键技术之一。将讨论在杂乱环境中使用线性目标模型和非线性测量模型进行目标跟踪的数据关联问题。首先,根据球坐标建立证据。然后,根据最近邻居和概率数据关联方法构造关联决策。仿真结果表明,后一种方法具有更好的性能。此外,将结果与线性目标跟踪相比较,线性目标跟踪在数据关联技术中确实很常见,并且可以证明,使用非线性测量模型进行目标跟踪的性能会略有下降。

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