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Anomaly Detection and Prediction of Human Actions in a Video Surveillance Environment

机译:视频监控环境中人为行为的异常检测与预测

摘要

World wide focus has over the years been shifting towards security issues, not in least due to recent world wide terrorist activities. Several researchers have proposed state of the art surveillance systems to help with some of the security issues with varying success. Recent studies have suggested that the ability of these surveillance systems to learn common environmental behaviour patterns as wells as to detect and predict unusual, or anomalous, activities based on those learnt patterns are possible improvements to those systems. In addition, some of these surveillance systems are still run by human operators, who are prone to mistakes and may need some help from the surveillance systems themselves in detection of anomalous activities. This dissertation attempts to address these suggestions by combining the fields of Image Understanding and Artificial Intelligence, specifically Bayesian Networks, to develop a prototype video surveillance system that can learn common environmental behaviour patterns, thus being able to detect and predict anomalous activity in the environment based on those learnt patterns. In addition, this dissertation aims to show how the prototype system can adapt to these anomalous behaviours and integrate them into its common patterns over a prolonged occurrence period. The prototype video surveillance system showed good performance and ability to detect, predict and integrate anomalous activity in the evaluation tests that were performed using a volunteer in an experimental indoor environment. In addition, the prototype system performed quite well on the PETS 2002 dataset 1, which it was not designed for. The evaluation procedure used some of the evaluation metrics commonly used on the PETS datasets. Hence, the prototype system provides a good approach to anomaly detection and prediction using Bayesian Networks trained on common environmental activities.
机译:这些年来,全球关注的焦点一直转向安全问题,这至少不仅仅因为最近发生的全球恐怖活动。一些研究人员提出了最先进的监视系统,以帮助成功解决某些安全问题。最近的研究表明,这些监视系统学习常见环境行为模式以及检测和预测基于这些学习模式的异常或异常活动的能力可能会改善这些系统。此外,其中一些监视系统仍由操作员操作,这些操作员容易出错,在检测异常活动时可能需要监视系统本身提供一些帮助。本文试图通过结合图像理解和人工智能领域,特别是贝叶斯网络,来解决这些建议,以开发能够学习常见环境行为模式的原型视频监控系统,从而能够检测和预测基于环境的异常活动。在那些学到的模式上。此外,本论文旨在展示原型系统如何适应这些异常行为,并在较长的发生时间内将它们整合到其常见模式中。原型视频监控系统显示出良好的性能,并且能够在志愿者在室内实验环境中进行的评估测试中检测,预测和整合异常活动。此外,该原型系统在PETS 2002数据集1上的运行情况也非常好,这不是为设计而设计的。评估程序使用了PETS数据集上常用的一些评估指标。因此,原型系统提供了一种使用经过常见环境活动训练的贝叶斯网络进行异常检测和预测的良好方法。

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    Spasic Nemanja;

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  • 年度 2007
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