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Learning complex event models using markov logic networks

机译:使用Markov逻辑网络学习复杂的事件模型

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An event model learning framework is proposed for indoor and outdoor surveillance applications in order to decrease human intervention in the modeling process. The resulting framework makes event detection and recognition flexible, domain and scene independent. A set of predicate types is introduced which define basic spatio-temporal relations and interactions between objects and people in the videos. A set of policies to choose the appropriate predicates is proposed for the event learning process. First, the video data is converted to a set of Markov Logic Network (MLN) predicates. Then, these policies, together with the discriminative weight learning algorithm, are used to infer the relevance of the predicates to the events being queried. Finally, the event model is generated. The proposed framework is applied to the generation of three different event models from CANTATA and our datasets. In particular, model generation for left object event is discussed in detail.
机译:针对室内和室外监控应用,提出了一种事件模型学习框架,以减少建模过程中的人为干预。由此产生的框架使事件检测和识别变得灵活,领域和场景无关。引入了一组谓词类型,这些谓词类型定义了视频中对象与人之间的基本时空关系和交互。为事件学习过程提出了一组选择适当谓词的策略。首先,视频数据被转换为一组马尔可夫逻辑网络(MLN)谓词。然后,这些策略与判别权重学习算法一起用于推断谓词与要查询的事件的相关性。最后,生成事件模型。所提出的框架适用于从CANTATA和我们的数据集中生成三种不同的事件模型。特别地,详细讨论了左对象事件的模型生成。

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