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Social Visual Image Ranking for Web Image Search

机译:Web图像搜索的社交视觉图像排名

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Many research have been focusing on how to match the textual query with visual images and their surrounding texts or tags for Web image search. The returned results are often unsatisfactory due to their deviation from user intentions. In this paper, we propose a novel image ranking approach to web image search, in which we use social data from social media platform jointly with visual data to improve the relevance between returned images and user intentions (i.e., social relevance). Specifically, we propose a community-specific Social-Visual Ranking(SVR) algorithm to rerank the Web images by taking social relevance into account. Through extensive experiments, we demonstrated the importance of both visual factors and social factors, and the effectiveness and superiority of the social-visual ranking algorithm for Web image search.
机译:许多研究一直集中在如何将文本查询与视觉图像及其周围的文本或标签进行匹配以进行Web图像搜索。由于返回结果偏离用户意图,因此返回结果通常不令人满意。在本文中,我们提出了一种用于Web图像搜索的新颖图像排名方法,该方法将社交媒体平台中的社交数据与视觉数据结合使用,以改善返回的图像与用户意图之间的相关性(即社交相关性)。具体来说,我们提出了一种特定于社区的“社会视觉排名”(SVR)算法,以通过考虑社会相关性来对Web图像进行排名。通过广泛的实验,我们证明了视觉因素和社会因素的重要性,以及用于网络图像搜索的社会视觉排名算法的有效性和优越性。

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