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MOTION PATTERN ANALYSIS IN CROWDED SCENES BASED ON HYBRID GENERATIVE-DISCRIMINATIVE FEATURE MAPS

机译:基于混合生成鉴别特征映射的拥挤场景中的运动模式分析

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Crowded scene analysis is becoming increasingly popular in computer vision field. In this paper, we propose a novel approach to analyze motion patterns by clustering the hybrid generative-discriminative feature maps using unsupervised hierarchical clustering algorithm. The hybrid generative-discriminative feature maps are derived by posterior divergence based on the tracklets which are captured by tracking dense points with three effective rules. The feature maps effectively associate low-level features with the semantical motion patterns by exploiting the hidden information in crowded scenes. Motion pattern analyzing is implemented in a completely unsupervised way and the feature maps are clustered automatically through hierarchical clustering algorithm building on the basis of graphic model. The experiment results precisely reveal the distributions of motion patterns in current crowded videos and demonstrate the effectiveness of our approach.
机译:拥挤的场景分析在计算机视觉领域越来越受欢迎。在本文中,我们提出了一种新的方法来分析运动模式,通过使用无监督的分层聚类算法聚类混合生成鉴别特征映射来分析运动模式。混合生成 - 鉴别特征图是基于基于跟踪具有三个有效规则的密集点捕获的轨迹的后发散来源的。通过利用拥挤的场景中的隐藏信息,该特征映射有效地将低级功能与语义运动模式相关联。运动模式分析以完全无监督的方式实现,并且在基于图形模型的基础上通过分层聚类算法构建自动聚集特征映射。实验结果精确地揭示了当前拥挤的视频中运动模式的分布,并展示了我们方法的有效性。

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