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Hierarchical Anomality Detection Based on Situation

机译:基于情境的分层异常检测

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In this paper, we propose a novel anomality detection method based on external situational information and hierarchical analysis of behaviors. Past studies model normal behaviors to detect anomality as outliers. However, normal behaviors tend to differ by situations. Our method combines a set of simple classifiers with pedestrian trajectories as inputs. As mere path information is not sufficient for detecting anomality, trajectories are first decomposed into hierarchical features of different abstract levels and then applied to appropriate classifiers corresponding to the situation it belongs to. Effects of the methods are tested using real environment data.
机译:在本文中,我们提出了一种基于外部情境信息和行为分层分析的新型异常检测方法。过去的研究对正常行为进行建模,以将异常情况检测为异常值。但是,正常的行为往往因情况而异。我们的方法将行人轨迹作为输入,结合了一组简单的分类器。由于仅路径信息不足以检测异常,因此首先将轨迹分解为不同抽象级别的分层特征,然后将其应用于与其所属情况相对应的适当分类器。使用实际环境数据测试方法的效果。

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