Tag Clustering and Refinement on Semantic Unity Graph

Yang Liu, Fei Wu, Yin Zhang, Jian Shao, Yueting Zhuang
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引用次数: 17

Abstract

Recently, there has been extensive research towards the user-provided tags on photo sharing websites which can greatly facilitate image retrieval and management. However, due to the arbitrariness of the tagging activities, these tags are often imprecise and incomplete. As a result, quite a few technologies has been proposed to improve the user experience on these photo sharing systems, including tag clustering and refinement, etc. In this work, we propose a novel framework to model the relationships among tags and images which can be applied to many tag based applications. Different from previous approaches which model images and tags as heterogeneous objects, images and their tags are uniformly viewed as compositions of Semantic Unities in our framework. Then Semantic Unity Graph (SUG) is introduced to represent the complex and high-order relationships among these Semantic Unities. Based on the representation of Semantic Unity Graph, the relevance of images and tags can be naturally measured in terms of the similarity of their Semantic Unities. Then Tag clustering and refinement can then be performed on SUG and the polysemy of images and tags is explicitly considered in this framework. The experiment results conducted on NUS-WIDE and MIR-Flickr datasets demonstrate the effectiveness and efficiency of the proposed approach.
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语义统一图上的标签聚类与改进
近年来,人们对图片分享网站上的用户提供标签进行了广泛的研究,这种标签可以极大地方便图片的检索和管理。然而,由于标注活动的随意性,这些标注往往是不精确和不完整的。因此,人们提出了许多技术来改善这些照片共享系统的用户体验,包括标签聚类和细化等。在这项工作中,我们提出了一个新的框架来模拟标签和图像之间的关系,该框架可以应用于许多基于标签的应用。与以往将图像和标签作为异构对象建模的方法不同,我们的框架将图像及其标签统一地视为语义统一的组合。然后引入语义统一图(Semantic Unity Graph, SUG)来表示这些语义统一之间复杂的高阶关系。基于语义统一图的表示,可以很自然地用图像和标签的语义统一的相似度来衡量它们之间的相关性。然后在SUG上进行标签聚类和细化,并明确考虑了图像和标签的多义性。在NUS-WIDE和MIR-Flickr数据集上进行的实验结果证明了该方法的有效性和效率。
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