基于本体的动态场景事件语义表示层次概念模型

Lun Xin, T. Tan
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引用次数: 11

摘要

近年来,人们对动态场景中事件的语义分析越来越感兴趣,并报道了许多不同的方法来解决这一具有挑战性的问题。本文提出了一种基于语义表示的事件建模与分析新方法。该方法的灵感来源于软件工程中的实体-关系模型。它将所有相关信息以本体的名义集成到一个层次概念模型中,并将事件定义为模式中概念单元的重大变化和映射。所有概念都由三个基本组件表示:一个实体、一个词和一组属性。我们的框架在底层完成特征提取的任务,在上层通过使用这些词接收事件的语义上有意义的表示。因此,我们的框架是数据驱动的,并提供语义输出。概念的语义相似度度量是另一个重要问题。本文提出了一种使用概念状态向量(CSV)和加权语义距离(WSD)来处理它的方法。实验结果证明了我们的方法对从不同场景捕获的真实视频的有效性。
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Ontology-based hierarchical conceptual model for semantic representation of events in dynamic scenes
There is an increasing interest in semantic analysis of events in dynamic scenes in recent years, and many different methods have been reported for this challenging problem. A new approach towards event modeling and analysis with semantic representations is proposed in this paper. Our method is inspired by the entity-relation model in software engineering. It integrates all related information into a hierarchical conceptual model by the name of ontology, and defines events as significant changes and mappings of conceptual units in the mode. All concepts are represented by three basic components, an entity, a word, and a set of attributes. The lower level of our framework achieves the task of feature extraction, and in the upper level, semantically meaningful representations of events are received by using these words. So our framework is data-driven and provides semantic outputs. Semantic similarity measurement of concepts is another important problem. In this paper we propose a method that uses conceptual status vector (CSV) and weighted semantic distance (WSD) to deal with it. Experimental results are presented which demonstrate the effectiveness of our approach on real-world videos captured from different scenes.
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