Interactive Event Recognition in Video

Mennan Güder, N. Cicekli
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Abstract

In this paper, we propose a multi-modal decision-level fusion framework to recognize events in videos. The main parts of the proposed framework are ontology based event definition, structural video decomposition, temporal rule discovery and event classification. Various decision sources such as audio continuity, content similarity, and shot sequence characteristics together with visual video feature sets are combined with event descriptors during decision-level fusion. The method is considered to be interactive because of the user directed ontology connection and temporal rule extraction strategies. It enables users to integrate available ontologies such as Image Net and Word Net while defining new event types. Temporal rules are discovered by association rule mining. In the proposed approach, computationally I/O intensive requirements of the association rule mining is reduced by one-pass frequent item set extractor and the proposed rule definition strategy. Accuracy of the proposed methodology is evaluated by employing TRECVid 2007 high level feature detection data set by comparing the results with C4.5 decision tree, SVM classifiers and Multiple Correspondence Analysis.
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视频中的交互式事件识别
本文提出了一种多模态决策级融合框架来识别视频中的事件。该框架的主要部分是基于本体的事件定义、结构化视频分解、时间规则发现和事件分类。在决策级融合过程中,将音频连续性、内容相似性、镜头序列特征等多种决策源以及视频视觉特征集与事件描述符相结合。由于采用了用户导向的本体连接和时态规则抽取策略,该方法被认为是交互式的。它使用户能够在定义新的事件类型时集成可用的本体,如imagenet和wordnet。时间规则是通过关联规则挖掘发现的。该方法采用单遍频繁项集提取器和规则定义策略,减少了关联规则挖掘的I/O密集型计算需求。利用TRECVid 2007高级特征检测数据集,将结果与C4.5决策树、SVM分类器和多重对应分析进行比较,对所提方法的准确性进行了评价。
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