Non-parametric data optimization for 2D laser based people tracking

Zulkarnain Zainudin, M. M. Ibrahim, S. Kodagoda
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引用次数: 1

Abstract

Generally, a model on describing human motion patterns should have an ability to enhance tracking performance particularly when dealing with long term occlusions. These patterns can be efficiently learned by applying Gaussian Processes (GPs). However, the GPs can become computationally expensive with increasing training data with time. Thus, with the proposed data selection and management using Mutual Information (MI) and Mahalanobis Distance (MD)approach, we have be able to keep the necessary portion of informative data and discard the others. This approach is then experimented by using the measurements of horizontal 2D scan of public area of our research centre with a stationary laser range finder. Experimental results show that even 90% reduction of data did not contribute to significantly increased Root Mean Square Error (RMSE). Implementation of Gaussian Process — Particle filter tracker for people tracking with long term occlusions produces a remarkable tracking performance when compared to Extended Kalman Filter (EKF) tracker.
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二维激光人体跟踪的非参数数据优化
一般来说,描述人类运动模式的模型应该有能力提高跟踪性能,特别是在处理长期闭塞时。这些模式可以通过应用高斯过程(GPs)有效地学习。然而,随着时间的推移,随着训练数据的增加,GPs的计算成本会变得很高。因此,使用互信息(MI)和马氏距离(MD)方法进行数据选择和管理,我们能够保留必要的信息数据部分,并丢弃其他部分。然后,利用固定式激光测距仪对研究中心公共区域进行水平二维扫描测量,对该方法进行了实验。实验结果表明,即使数据减少90%,也不会显著增加均方根误差(RMSE)。与扩展卡尔曼滤波(EKF)跟踪器相比,实现高斯过程-粒子滤波跟踪器对长期闭塞人群的跟踪产生了显着的跟踪性能。
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