应用于群体行为识别的视频理解通用框架

Sofia Zaidenberg, Bernard Boulay, F. Brémond
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引用次数: 30

摘要

本文提出了一种在视频监控应用中检测和跟踪人群,并对其行为进行自动识别的方法。这种方法通过保持空间和时间的群体一致性来跟踪个体的移动。首先,每个人都被单独检测和跟踪。其次,在一个时间窗口内分析它们的轨迹,并使用Mean-Shift算法聚类。一致性值描述了将一组人描述为一个群体的程度。此外,我们提出了一种形式化的事件描述语言。群体事件识别方法在机场、地铁、购物中心走廊和入口大厅3个数据集的4个摄像头视图上成功验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Generic Framework for Video Understanding Applied to Group Behavior Recognition
This paper presents an approach to detect and track groups of people in video-surveillance applications, and to automatically recognize their behavior. This method keeps track of individuals moving together by maintaining a spacial and temporal group coherence. First, people are individually detected and tracked. Second, their trajectories are analyzed over a temporal window and clustered using the Mean-Shift algorithm. A coherence value describes how well a set of people can be described as a group. Furthermore, we propose a formal event description language. The group events recognition approach is successfully validated on 4 camera views from 3 datasets: an airport, a subway, a shopping center corridor and an entrance hall.
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