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Cross-media retrieval by intra-media and inter-media correlation mining

机译:通过媒体内和媒体间相关挖掘进行跨媒体检索

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With the rapid development of multimedia content on the Internet, cross-media retrieval has become a key problem in both research and application. Cross-media retrieval is able to retrieve the results of the same semantics with the query, but with different media types. For instance, given a query image of Moraine Lake, besides retrieving the images about Moraine Lake, cross-media retrieval system can also retrieve the related media contents of different media types such as text description. As a result, measuring content similarity between different media is a challenging problem. In this paper, we propose a novel cross-media similarity measure. It considers both intra-media and inter-media correlation, which are ignored by existing works. Intra-media correlation focuses on semantic category information within each media, while inter-media correlation focuses on positive and negative correlations between different media types. Both of them are very important and their adaptive fusion can complement each other. To mine the intra-media correlation, we propose a heterogeneous similarity measure with nearest neighbors (HSNN). The heterogeneous similarity is obtained by computing the probability for two media objects belonging to the same semantic category. To mine the inter-media correlation, we propose a cross-media correlation propagation (CMCP) approach to simultaneously deal with positive and negative correlation between media objects of different media types, while existing works focus solely on the positive correlation. Negative correlation is very important because it provides effective exclusive information. The correlations are modeled as must-link constraints and cannot-link constraints, respectively. Furthermore, our approach is able to propagate the correlation between heterogeneous modalities. Finally, both HSNN and CMCP are flexible, so that any traditional similarity measure could be incorporated. An effective ranking model is learned by further fusion of multiple similarity measures through AdaRank for cross-media retrieval. The experimental results on two datasets show the effectiveness of our proposed approach, compared with state-of-the-art methods.
机译:随着因特网上多媒体内容的迅速发展,跨媒体检索已成为研究和应用中的关键问题。跨媒体检索能够通过查询检索具有相同语义的结果,但具有不同的媒体类型。例如,给定冰Mor湖的查询图像,除了检索关于冰a湖的图像,跨媒体检索系统还可以检索不同媒体类型的相关媒体内容,例如文本描述。结果,测量不同媒体之间的内容相似性是一个具有挑战性的问题。在本文中,我们提出了一种新颖的跨媒体相似性度量。它同时考虑了媒体内和媒体间的相关性,而现有的研究却忽略了它们。媒体内相关关注于每种媒体内的语义类别信息,而媒体间相关关注于不同媒体类型之间的正向和负向相关。两者都很重要,它们的自适应融合可以互相补充。为了挖掘媒体内相关性,我们提出了一种与最近邻居(HSNN)的异构相似性度量。通过计算属于同一语义类别的两个媒体对象的概率来获得异构相似性。为了挖掘媒体之间的相关性,我们提出了一种跨媒体相关性传播(CMCP)方法,以同时处理不同媒体类型的媒体对象之间的正相关和负相关,而现有工作仅关注正相关。负相关非常重要,因为它可以提供有效的排他信息。分别将相关性建模为必须链接约束和不能链接约束。此外,我们的方法能够传播异构模式之间的相关性。最后,HSNN和CMCP都很灵活,因此可以合并任何传统的相似性度量。通过跨AdaRank进一步融合多个相似性度量以进行跨媒体检索,可以学习到有效的排名模型。与最先进的方法相比,在两个数据集上的实验结果表明了我们提出的方法的有效性。

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