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Using visual context and region semantics for high-level concept detection

机译:使用视觉上下文和区域语义进行高级概念检测

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摘要

In this paper we investigate detection of high-level concepts in multimedia content through an integrated approach of visual thesaurus analysis and visual context. In the former, detection is based on model vectors that represent image composition in terms of region types, obtained through clustering over a large data set. The latter deals with two aspects, namely high-level concepts and region types of the thesaurus, employing a model of a priori specified semantic relations among concepts and automatically extracted topological relations among region types; thus it combines both conceptual and topological context. A set of algorithms is presented, which modify either the confidence values of detected concepts, or the model vectors based on which detection is performed. Visual context exploitation is evaluated on TRECVID and Corel data sets and compared to a number of related visual thesaurus approaches. © 2009 IEEE.
机译:在本文中,我们通过视觉同义词库分析和视觉上下文的集成方法来研究多媒体内容中高级概念的检测。在前者中,检测基于模型矢量,该模型矢量是通过对大型数据集进行聚类而获得的代表区域类型的图像组成的。后者涉及两个方面,即词库的高级概念和区域类型,采用概念之间先验指定的语义关系模型并自动提取区域类型之间的拓扑关系。因此,它结合了概念和拓扑上下文。提出了一组算法,这些算法可修改检测到的概念的置信度值或基于执行检测的模型向量。在TRECVID和Corel数据集上评估视觉上下文开发,并将其与许多相关的视觉词库方法进行比较。 ©2009 IEEE。

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