CLC number: TP391.9
On-line Access: 2021-10-08
Received: 2020-07-02
Revision Accepted: 2020-11-04
Crosschecked: 2021-08-12
Cited: 0
Clicked: 5204
Citations: Bibtex RefMan EndNote GB/T7714
Ning Ding, Weimin Qi, Huihuan Qian. Crowd modeling based on purposiveness and a destination-driven analysis method[J]. Frontiers of Information Technology & Electronic Engineering,in press.https://doi.org/10.1631/FITEE.2000312 @article{title="Crowd modeling based on purposiveness and a destination-driven analysis method", %0 Journal Article TY - JOUR
基于目的性的人群建模和目标驱动分析方法1香港中文大学(深圳)机器人与智能制造研究院,中国深圳市,518172 2深圳市人工智能与机器人研究院,中国深圳市,518172 3香港中文大学(深圳)理工学院,中国深圳市,518172 摘要:本文主要研究人群运动的多相流特性。稳定性是人群的一个重要预警因素。为评价新到达行人的行为和人群的稳定性,建立一种基于目的性的运动结构分析模型,用于描述行人追求自身目标的连续性。使用目标驱动分析方法,用自驱动粒子表示人群。这些自驱动粒子是人体图像的可跟踪特征点。然后,利用轨迹计算这些自驱动粒子的目的性,并选择高目的性轨迹估计公共目的地和人群内在结构。最后,利用这些公共目的地和人群结构评估新到达行人的行为和人群稳定性。研究表明,目的性参数是一个适于描述中等密度人群的描述符,提出的目标驱动分析方法能够描述复杂人群运动行为。使用合成和真实的人类以及动物群体数据与视频,验证了所提方法的有效性。 关键词组: Darkslateblue:Affiliate; Royal Blue:Author; Turquoise:Article
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