Learning pedestrian dynamics with kriging

K. Kawamoto, Yoshiyuki Tomura, Kazushi Okamoto
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引用次数: 5

Abstract

This paper proposes a method for learning pedestrian dynamics with kriging, which is a spatial interpolation method in geosciences. Pedestrian dynamics is generally restricted by other pedestrians and its restriction is caused by social interaction between them. In the proposed method, the social interaction is represented by spatio-temporal correlation of pedestrian dynamics and the correlation is estimated by kriging. As an application of the proposed method, the prediction of pedestrian movement is examined and its performance is evaluated with publicly available benchmark dataset. The experimental results show that 10-step ahead prediction is successful with more than 80% trajectories of the datasets if 2.0[m] distance error is allowed.
用克里格学习行人动力学
本文提出了一种基于kriging的行人动力学学习方法,这是地球科学中的一种空间插值方法。行人动态通常受到其他行人的制约,这种制约是由行人之间的社会互动引起的。该方法以行人动态的时空相关性来表示社会互动,并采用克里格法对相关性进行估计。作为该方法的应用,研究了行人运动的预测,并使用公开的基准数据集对其性能进行了评估。实验结果表明,在允许2.0[m]距离误差的情况下,对数据集的轨迹进行10步提前预测的成功率超过80%。
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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