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Surveillance Event Interpretation Using Generalized Stochastic Petri Nets

机译:广义随机Petri网的监测事件解释

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In this paper we present video event representation and recognition approaches that are based on Generalized Stochastic Petri Nets (GSPN). Along with the typical modeling capabilities of GSPN for video recognition, we propose to integrate the Petri net marking analysis for better scene understanding. This work focuses on behavior modeling and uses the results of an external module for object detection, tracking and classification. The proposed approach is evaluated using the developed surveillance system which can recognize events from videos and give a textual expression for the detected behavior. The experimental results illustrate the ability of the system to create complex spatiotemporal relations and to recognize the behavior of one or multiple objects in various video scenes.
机译:在本文中,我们介绍了基于广义随机Petri网(GSPN)的视频事件表示和识别方法。除了用于视频识别的GSPN的典型建模功能外,我们建议集成Petri网标记分析以更好地了解场景。这项工作着重于行为建模,并将外部模块的结果用于对象检测,跟踪和分类。使用开发的监视系统对提出的方法进行评估,该监视系统可以识别视频中的事件并为检测到的行为提供文本表示。实验结果说明了系统创建复杂的时空关系并识别各种视频场景中一个或多个对象的行为的能力。

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