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Visual content representation using semantically similar visual words

机译:使用语义相似的视觉词的视觉内容表示

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摘要

Local feature analysis of visual content, namely using Scale Invariant Feature Transform (SIFT) descriptors, have been deployed in the 'bag-of-visual words' model (BVW) as an effective method to represent visual content information and to enhance its classification and retrieval. The key contributions of this paper are first, a novel approach for visual words construction which takes physically spatial information, angle, and scale of keypoints into account in order to preserve semantic information of objects in visual content and to enhance the traditional bag-of-visual words, is presented. Second, a method to identify and eliminate similar key points, to form semantic visual words of high quality and to strengthen the discrimination power for visual content classification, is given. Third, an approach to discover a set of semantically similar visual words and to form visual phrases representing visual content more distinctively and leading to narrowing the semantic gap is specified.
机译:视觉内容的局部特征分析,即使用尺度不变特征变换(SIFT)描述符,已被部署在“视觉包词”模型(BVW)中,作为表示视觉内容信息并增强其分类和分类的有效方法。恢复。本文的主要贡献是,首先,这是一种新颖的视觉单词构建方法,该方法考虑了物理空间信息,角度和关键点的比例,以保留视觉内容中对象的语义信息并增强传统的袋视觉单词。其次,提出了一种识别和消除相似关键点,形成高质量语义视觉词并增强对视觉内容分类的辨别力的方法。第三,指定了一种方法,用于发现一组语义上相似的视觉单词,并形成更独特地表示视觉内容并导致缩小语义鸿沟的视觉短语。

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