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Semantic indexing of multimedia content using textual and visual information

机译:使用文本和视觉信息对多媒体内容进行语义索引

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摘要

The challenge in multimedia information retrieval remains in the indexing process, an active search area. There are three fundamental techniques for indexing multimedia content: using textual information, using low-level information and combining different information extracted from multimedia. Each approach has its advantages and disadvantages as well to improve multimedia retrieval systems. The recent works are oriented towards multimodal approaches. In this paper, we propose an approach that combines the surrounding text with the information extracted from the visual content of multimedia and represented in the same repository in order to allow querying multimedia content based on keywords or concepts. Each word contained in queries or in description of multimedia is disambiguated using the WordNet ontology in order to define its semantic concept. Support vector machines (SVMs) are used for image classification in one of the defined semantic concept based on SIFT (scale invariant feature transform) descriptors.
机译:多媒体信息检索中的挑战仍然在索引过程中,这是一个活跃的搜索区域。索引多媒体内容有三种基本技术:使用文本信息,使用低级信息以及组合从多媒体中提取的不同信息。每种方法也都有其优点和缺点,以改进多媒体检索系统。最近的工作是针对多峰方法。在本文中,我们提出了一种方法,该方法将周围的文本与从多媒体的可视内容中提取并在同一存储库中表示的信息进行组合,以允许基于关键字或概念查询多媒体内容。使用WordNet本体对查询或多媒体描述中包含的每个单词进行歧义消除,以定义其语义概念。支持向量机(SVM)用于基于SIFT(尺度不变特征变换)描述符的已定义语义概念之一中的图像分类。

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