基于动作和场景背景信息混合特征分析的异常视频检测系统的开发

Bharindra Kamanditya
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引用次数: 0

摘要

从监控摄像机捕获的视频片段中检测异常事件是一项重要的任务,特别是对于安全系统而言。然而,由于这种情况发生的概率很低,因此需要自动检测异常事件来取代人工的劳动密集型工作。研究人员已经开发了各种方法来解决这个问题,然而,大多数提出的方法限制了他们对异常事件的定义,当它发生在其他场景背景中时,可能会被认为具有不同的含义。我们开发了一个自动异常视频检测系统,通过从视频剪辑中提取单个动作,然后提取与各自动作相关的各种场景背景特征,并通过图卷积网络表示为视频图,以分类为异常。由于现有的数据库无法用于本次实验,我们还构建了一个新的数据库。实验结果表明,与传统方法相比,该方法成功地检测出了各种异常动作视频,具有更高的识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Anomalous Video Detection System using Hybrid-Features Analysis of Actions and Scene-Backgrounds Information
Detecting an anomalous event in video clips captured from a surveillance camera is an important task, especially for security system purposes. However, as the probability of such occurrence is very low, automatic detection of the anomalous event is then necessary to replace the human labor-intensive works. Researchers have developed various methods to solve this problem, however, most of the proposed methods limit their definitions of anomalous events that might be perceived as having a different meaning when it occurs in other scene backgrounds. We have developed an automatic anomalous video detection system by extracting the individual action from the video clips, followed by extracting also various scene-background characteristics related with the respective action, and represented as a Video Graph to be classified as an anomaly through a Graph Convolutional Networks. We also constructed a new database as the available databases could not be used in this experiment. Results of experiments show that the various anomalous actions videos have been successfully detected with higher recognition capability compared with that of the conventional methods.
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