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Group context learning for event recognition

机译:团体情境学习以进行事件识别

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We address the problem of group-level event recognition from videos. The events of interest are defined based on the motion and interaction of members in a group over time. Example events include group formation, dispersion, following, chasing, flanking, and fighting. To recognize these complex group events, we propose a novel approach that learns the group-level scenario context from automatically extracted individual trajectories. We first perform a group structure analysis to produce a weighted graph that represents the probabilistic group membership of the individuals. We then extract features from this graph to capture the motion and action contexts among the groups. The features are represented using the “bag-of-words” scheme. Finally, our method uses the learned Support Vector Machine (SVM) to classify a video segment into the six event categories. Our implementation builds upon a mature multi-camera multi-target tracking system that recognizes the group-level events involving up to 20 individuals in real-time.
机译:我们解决了视频中的组级事件识别问题。感兴趣的事件是基于组中成员随时间的运动和交互来定义的。示例事件包括组队形成,分散,跟随,追逐,侧翼和战斗。为了识别这些复杂的团体事件,我们提出了一种新颖的方法,该方法可以从自动提取的单个轨迹中学习团体级别的情景。我们首先执行组结构分析以生成表示个体概率组成员资格的加权图。然后,我们从该图中提取特征以捕获组之间的运动和动作上下文。使用“词袋”方案表示特征。最后,我们的方法使用学习的支持向量机(SVM)将视频片段分类为六个事件类别。我们的实施基于成熟的多摄像机多目标跟踪系统,该系统可以实时识别涉及多达20个人的组级事件。

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