Monte Carlo Simulations on 2D LRF Based People Tracking using Interactive Multiple Model Probabilistic Data Association Filter Tracker

Zulkarnain Zainudin, S. Kodagoda
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Abstract

Consistency of tracking filter such as Interactive Multiple Model Probabilistic Data Association Filter (IMMPDAF) is the most important factor in targets tracking. Inaccurate tracking capability will lead to poor tracking performance when dealing with multiple people's interactions and occlusions. In order to validate the consistency, Normalized Estimation Error Squared (NEES) and Normalized Innovation Squared (NIS) were evaluated and tested using Monte Carlo experiments for 50 runs. These simulations has proven that the tracker is conditionally consistent on targets tracking despite the fact that it has difficulties on handling occlusions and maneuvering people. NEES requires ground truth of tracking data and predicted data, whereas NIS requires observation and predicted data for Monte Carlo simulations. In NEES simulations, the result emphasizes that state estimation errors of IMMPDAF tracker are inconsistent with filter-calculated covariances especially when dealing with sudden turns in zig-zag motion where quite a large number of points fall outside 95\% probability region. In NIS simulations, IMMPDAF tracker is confirmed to have difficulties to handle multiple targets with a short period of occlusion although a small number of points falls outside of 95\% probability region. Filter tracker is considered mismatched when dealing with zig-zag motion; however, it deemed to be optimistic when dealing with occlusions. As a result, the IMMPDAF tracker has limited capability in monitoring sharp turns under occlusion conditions, although it is acceptable when dealing with occlusions only.
基于交互式多模型概率数据关联滤波跟踪器的二维LRF人群跟踪蒙特卡罗仿真
交互式多模型概率数据关联滤波器(IMMPDAF)等跟踪滤波器的一致性是影响目标跟踪的最重要因素。当处理多人交互和遮挡时,不准确的跟踪能力会导致跟踪性能差。为了验证一致性,使用蒙特卡罗实验对50次运行的归一化估计误差平方(NEES)和归一化创新平方(NIS)进行了评估和测试。这些仿真结果表明,尽管该跟踪器在处理遮挡和操纵人员方面存在困难,但它在目标跟踪上是有条件的一致的。NEES需要跟踪数据和预测数据的基础真实性,而NIS需要蒙特卡罗模拟的观察和预测数据。在NEES仿真中,结果强调了IMMPDAF跟踪器的状态估计误差与滤波计算的协方差不一致,特别是在处理锯齿形运动中的突然转弯时,大量的点落在95%概率区域之外。在NIS仿真中,IMMPDAF跟踪器被证实难以处理短时间遮挡的多个目标,尽管少数点落在95%的概率区域之外。在处理锯齿形运动时,滤波器跟踪器被认为是不匹配的;然而,当处理闭塞时,它被认为是乐观的。因此,IMMPDAF跟踪器在遮挡条件下监测急转弯的能力有限,尽管仅在处理遮挡时是可以接受的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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