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Learning, detection and representation of multi-agent events in videos

机译:视频中多主体事件的学习,检测和表示

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摘要

In this paper, we model multi-agent events in terms of a temporally varying sequence of sub-events, and propose a novel approach for learning, detecting and representing events in videos. The proposed approach has three main steps. First, in order to learn the event structure from training videos, we automatically encode the sub-event dependency graph, which is the learnt event model that depicts the conditional dependency between sub-events. Second, we pose the problem of event detection in novel videos as clustering the maximally correlated sub-events using normalized cuts. The principal assumption made in this work is that the events are composed of a highly correlated chain of sub-events that have high weights (association) within the cluster and relatively low weights (disassociation) between the clusters. The event detection does not require prior knowledge of the number of agents involved in an event and does not make any assumptions about the length of an event. Third, we recognize the fact that any abstract event model should extend to representations related to human understanding of events. Therefore, we propose an extension of CASE representation of natural languages that allows a plausible means of interface between users and the computer. We show results of learning, detection, and representation of events for videos in the meeting, surveillance, and railroad monitoring domains.
机译:在本文中,我们根据随时间变化的子事件序列对多主体事件建模,并提出了一种学习,检测和表示视频中事件的新颖方法。提议的方法有三个主要步骤。首先,为了从训练视频中学习事件结构,我们自动对子事件依赖图进行编码,这是学习的事件模型,用于描述子事件之间的条件依赖。其次,我们提出了在新颖视频中进行事件检测的问题,即使用归一化剪辑将最大相关子事件聚类。这项工作的主要假设是事件由高度相关的子事件链组成,这些子事件在集群中具有较高的权重(关联),在集群之间具有相对较低的权重(解除关联)。事件检测不需要事先了解事件中涉及的代理数量,也无需对事件的持续时间做出任何假设。第三,我们认识到任何抽象事件模型都应扩展到与人类对事件的理解有关的表示这一事实。因此,我们提出了自然语言的CASE表示形式的扩展,该扩展允许在用户和计算机之间建立合理的接口方式。我们显示了在会议,监视和铁路监视领域中视频的学习,检测和事件表示结果。

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