基于动态时间扭曲的监控视频轨迹聚类

Ali Abdari, H. Mohammadzade, Seyed Ali Hashemian
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引用次数: 0

摘要

对监控摄像头拍摄的视频进行功能分析,可以为用户提供方便的信息。挖掘视频中已有的轨迹是最有价值的特征之一,它可以发现视频中的流行模式及其密度,有助于更容易地揭示一些不寻常和异常的动作。在本文中,通过执行检测和跟踪算法获得的数据进行不同步骤的处理,并通过部署改进版本的DTW算法来训练分层聚类模型。这种实用的方法不需要大量的数据集用于训练过程,并且可以应用于任何包含不同类型对象的监控视频。该方法利用从视频对象中提取的信息来生成现有的主轨迹。此外,还提出了一种实用的监控电影背景建模算法来说明聚类输出。
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Trajectory Clustering in Surveillance Videos Using Dynamic Time Warping
Adding functional analysis to the videos captured by surveillance cameras can provide handy information to their users. Mining the existing trajectories in a video is one of the most valuable features, discovering the prevalent patterns and their density in the video, and it helps reveal some unusual and abnormal movements more easily. In this paper, the data obtained through the execution of detection and tracking algorithms are processed in various steps and used to train a hierarchical clustering model by deploying a modified version of the DTW algorithm. This practical approach does not need massive datasets for the training procedure and can be applied to any surveillance video containing different types of objects. The proposed method utilizes information extracted from the objects in a video to generate the existing primary trajectories. Additionally, a practical algorithm for modeling the background in surveillance movies is proposed to illustrate clustering outputs.
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