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Convex Polytope Ensembles for Spatio-Temporal Anomaly Detection

机译:凸多面体集合用于时空异常检测

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Modern automated visual surveillance scenarios demand to process effectively a large set of visual stream with a limited amount of human resources. Actionable information is required in real-time, therefore abnormal pattern detection shall be performed in order to select the most useful streams for an operator to visually inspect. To tackle this challenging task we propose a novel method based on convex polytope ensembles to perform anomaly detection. Our method relies on local trajectory based features. We report State-of-the-Art results on pixel-level anomaly detection on the challenging publicly available UCSD Pedestrian dataset.
机译:现代自动视觉监视场景要求以有限的人力资源有效地处理大量的视觉流。实时需要可操作的信息,因此应执行异常模式检测,以便为操作员选择最有用的流以进行视觉检查。为了解决这一具有挑战性的任务,我们提出了一种基于凸多面体集合的新方法来执行异常检测。我们的方法依赖于基于局部轨迹的特征。我们报告了具有挑战性的公开可用的UCSD行人数据集的像素级异常检测的最新结果。

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