基于机器学习算法的人类异常数据集中拥挤场景异常检测

Hatice Kübra Boyrazlı, A. Cinar
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引用次数: 0

摘要

近年来,在拥挤的环境中保持安全是一个普遍的问题。摄像机系统用于确保拥挤环境中的安全。在检查摄像机记录的视频图像时,检查环境中是否有危险和异常的运动,并制定适当的措施。必须对人类行为进行建模,以检测拥挤场景中的正常和异常行为。在本研究中,研究了UMN异常数据集中三种不同环境下的拥挤场景。随机森林、支持向量机和k近邻算法是这三种不同环境下的机器学习方法之一。由于应用了算法,在拥挤的场景中可以检测到人们的异常行为(如逃跑)。计算并比较了这些应用算法的准确度、灵敏度、精密度和F1评分等性能指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANOMALY DETECTION WITH MACHINE LEARNING ALGORITHMS IN CROWDED SCENES IN UMN ANOMALY DATASET
In recent years, keeping security under control in crowded environments has been a common problem. Camera systems are used to ensure security in crowded environments. When the video images recorded by the cameras are examined, it is checked whether there is any dangerous and unusual movement in the environment and appropriate measures are developed. Human behavior must be modelled to detect normal and abnormal behaviors in crowded scenes. In this study, crowded scenes in three different environments in the UMN Anomaly Data Set were examined. Random Forest, Support Vector Machines and k Nearest Neighbour algorithms, which are one of the machine learning methods in these three different environments, are applied. As a result of algorithms applied, the abnormal behaviour (like escape) of people in a crowded scene has been detected. Performance criteria such as accuracy, sensitivity, precision and F1 score of these applied algorithms were calculated and compared.
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