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Using dynamic Bayesian network for scene modeling and anomaly detection

机译:使用动态贝叶斯网络进行场景建模和异常检测

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摘要

In this paper, we address the problem of scene modeling for performing video surveillance. The problem consists of using the trajectories, obtained by observing objects in a scene, to construct a scene model that can be used to distinguish a normal and an acceptable behavior from a atypical one. In this regard, the proposed method is divided into a training phase and a testing phase. During the training phase, the input trajectories are used to identify different paths or routes commonly taken by the objects in a scene. Important discriminative features are then extracted from these identified paths to learn a dynamic Bayesian network (DBN). During the testing phase, the learned network is used to classify the incoming trajectories based on their size, location, speed, acceleration, and spatio-temproal curvature characteristics. The proposed method (ⅰ) handles trajectories of varying lengths, (ⅱ) automatically detects the number of paths presents in a scene, and (ⅲ) introduces the novel usage of the DBN, which is very intuitive and accurately captures the dynamics of the scene. We show results on four datasets of varying lengths and successfully show results for both path clustering and anomalous behavior detection.
机译:在本文中,我们解决了用于执行视频监视的场景建模问题。问题在于使用通过观察场景中的对象获得的轨迹来构建场景模型,该场景模型可用于区分正常行为和可接受行为与非典型行为。在这方面,所提出的方法分为训练阶段和测试阶段。在训练阶段,输入轨迹用于识别场景中的对象通常采用的不同路径或路线。然后从这些确定的路径中提取重要的判别特征,以学习动态贝叶斯网络(DBN)。在测试阶段,学习到的网络用于根据传入轨迹的大小,位置,速度,加速度和时空曲率特征对其进行分类。所提出的方法(ⅰ)处理不同长度的轨迹,(ⅱ)自动检测场景中存在的路径数量,并且(introduces)引入了DBN的新颖用法,该用法非常直观并且可以准确捕获场景的动态变化。我们显示了四个不同长度的数据集的结果,并成功显示了路径聚类和异常行为检测的结果。

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