Comparative Study on Object Tracking Algorithms for mobile robot Navigation in GPS-denied Environment

H. Hewawasam, M. Ibrahim, G. Kahandawa, T. A. Choudhury
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引用次数: 5

Abstract

This paper presents a comparative study conducted on the performance of the commonly used object tracking and location prediction algorithms for mobile robot navigation in a dynamically cluttered and GPS-denied mining environment. The study was done to test the different algorithms for the same set criteria (such as accuracy and computational time) under the same conditions.The identified commonly used algorithms for object tracking and location prediction of moving objects used in this investigation are Kalman filter (KF), extended Kalman filter (EKF) and particle filter (PF). The study results of those algorithms are analyzed and discussed in this paper. A trade-off was apparent. However, in overall performance KF has shown its competitiveness.The result from the study has found that the KF based algorithm provides better performance in terms of accuracy in tracking dynamic objects under commonly used benchmarks. This finding can be used in development of an efficient robot navigation algorithm.
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gps拒绝环境下移动机器人导航目标跟踪算法比较研究
本文对移动机器人导航中常用的目标跟踪和位置预测算法在动态混乱和gps拒绝的采矿环境下的性能进行了比较研究。本研究是在相同的条件下,对相同的一组标准(如精度和计算时间)的不同算法进行测试。本文研究中常用的目标跟踪和运动目标位置预测算法有卡尔曼滤波(KF)、扩展卡尔曼滤波(EKF)和粒子滤波(PF)。本文对这些算法的研究结果进行了分析和讨论。一种权衡是显而易见的。然而,在整体表现上,KF显示出了竞争力。研究结果发现,在常用基准下,基于KF的算法在跟踪动态对象的准确性方面具有更好的性能。这一发现可用于开发一种高效的机器人导航算法。
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