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Video Event Modeling and Recognition in Generalized Stochastic Petri Nets

机译:广义随机Petri网中的视频事件建模与识别

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In this paper, we propose the surveillance event recognition framework using Petri Nets (SERF-PN) for recognition of event occurrences in video. The Petri Net (PN) formalism allows a robust way to express semantic knowledge about the event domain as well as efficient algorithms for recognizing events as they occur in a particular video sequence. The major novelties of this paper are extensions to both the modeling and the recognition capacities of the Object PN paradigm. The first contribution of this paper is the extension of the PN representational capacities by introducing stochastic timed transitions to allow modeling of events which have some variance in duration. These stochastic timed transitions sample the duration of the condition from a parametrized distribution. The parameters of this distribution can be specified manually or learned from available video data. A second representational novelty is the use of a single PN to represent the entire event domain, as opposed to previous approaches which have utilized several networks, one for each event of interest. A third contribution of this paper is the capacity to probabilistically predict future events by constructing a discrete time Markov chain model of transitions between states. The experiments section of the paper thoroughly evaluates the application of the SERF-PN framework in the event domains of surveillance and traffic monitoring and provides comparison to other approaches using the CAVIAR dataset , a standard dataset for video analysis applications.
机译:在本文中,我们提出了使用Petri网(SERF-PN)的监视事件识别框架来识别视频中的事件发生。 Petri Net(PN)形式主义提供了一种鲁棒的方式来表达有关事件域的语义知识,以及在事件发生在特定视频序列中时对其进行识别的有效算法。本文的主要新颖之处在于对对象PN范例的建模和识别能力的扩展。本文的第一个贡献是通过引入随机定时转换来扩展PN表示能力,从而可以对持续时间有所变化的事件进行建模。这些随机定时转换从参数化分布中采样条件的持续时间。可以手动指定此分发的参数,也可以从可用的视频数据中学习。第二个代表性的新颖性是使用单个PN来表示整个事件域,这与以前的利用几个网络的方法相反,每个网络用于每个感兴趣的事件。本文的第三点贡献是通过构建状态之间转移的离散时间马尔可夫链模型来概率预测未来事件的能力。本文的实验部分全面评估了SERF-PN框架在监视和交通监控的事件领域中的应用,并使用CAVIAR数据集(视频分析应用的标准数据集)与其他方法进行了比较。

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