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Dynamic clustering for event detection and anomaly identification in video surveillance

机译:动态聚类,用于视频监控中的事件检测和异常识别

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This work introduces concepts and algorithms along with a case study validating them, to enhance the event detection, pattern recognition and anomaly identification results in real life video surveillance. The motivation for the work underlies in the observation that human behavioral patterns in general continuously evolve and adapt with time, rather than being static. First, limitations in existing work with respect to this phenomena are identified. Accordingly, the notion and algorithms of Dynamic Clustering are introduced in order to overcome these drawbacks. Correspondingly, we propose the concept of maintaining two separate sets of data in parallel, namely the Normal Plane and the Anomaly Plane, to successfully achieve the task of learning continuously. The practicability of the proposed algorithms in a real life scenario is demonstrated through a case study. From the analysis presented in this work, it is evident that a more comprehensive analysis, closely following human perception can be accomplished by incorporating the proposed notions and algorithms in a video surveillance event.
机译:这项工作介绍了概念和算法以及验证它们的案例研究,以增强现实视频监控中的事件检测,模式识别和异常识别结果。从事这项工作的动机在于观察到,人类的行为模式通常会随着时间的推移不断发展和适应,而不是一成不变的。首先,确定了有关这种现象的现有工作的局限性。因此,为了克服这些缺点,引入了动态聚类的概念和算法。相应地,我们提出了并行维护两组独立数据集的概念,即正常平面和异常平面,以成功地实现连续学习的任务。通过案例研究证明了所提出算法在现实生活中的实用性。从这项工作中提出的分析,很明显,通过将拟议的概念和算法纳入视频监视事件中,可以紧跟人类的感知来完成更全面的分析。

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