交通监控中行为模式学习的轨迹聚类

M. Y. Choong, R. Chin, K. Yeo, K. Teo
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引用次数: 10

摘要

开发一种高效的交通流量监测系统一直是该领域研究人员关注的焦点。由于城市化的快速发展,交通交叉口的复杂性给研究人员对潜在交通场景的检测提出了挑战。随着基于视频的监控系统的兴起,可以通过行为模式学习提取车辆轨迹进行观察和预测。在学习之前,对提取的车辆轨迹数据进行聚类,基于相似性度量对数据进行分组。本文分析了弹道数据聚类算法的实现,讨论了弹道数据聚类的相关问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory Clustering for Behavioral Pattern Learning in Transportation Surveillance
The development of an efficient traffic flow monitoring system has been the main focus for many researchers working in the field. Due to the rapid development in urbanization, the complexity of traffic intersections provides challenges for researchers to detect the underlying traffic scenes. With the emerging video based surveillance system, vehicle trajectory can be extracted for observation and prediction via behavioral pattern learning. Prior to the learning, clustering of the extracted vehicle trajectory data is performed to group the data based on similarity measures. In this paper, the implementation of clustering algorithm on the trajectory data is analyzed and issues concerning the trajectory clustering are discussed.
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