Image tag refinement using tag semantic and visual similarity

Wengang Cheng, Xiaolei Wang
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引用次数: 3

Abstract

Social tagging on online websites provides users interfaces of describing resources with their own tags, and vast user-provided image tags facilitate image retrieval and management. However, these tags are often not related to the actual image content, affecting the performance of tag related applications. In this paper, a novel approach to automatically refine the image tags is proposed. Firstly, information entropy of the tag is defined to refine tag frequency to predict tag initial relevance. Then, tag correlation is calculated from two sides. One side is to measure semantic similarity of tag pairs using the structured information of the free encyclopedia Wikipedia. The other one is to compute the visual similarity of tag pairs based on the visual representation of the tag. Finally, to re-rank the original tags, a fast random walk with restart is used and the top ones are reserved as the final tags. Experimental results conducted on dataset NUS-WIDE demonstrate the promising effectiveness of our approach.
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利用标签语义和视觉相似性对图像标签进行细化
在线网站的社交标签为用户提供了用自己的标签描述资源的界面,大量用户提供的图像标签便于图像的检索和管理。但是,这些标签往往与实际的图像内容不相关,影响了标签相关应用的性能。本文提出了一种新的图像标签自动细化方法。首先,定义标签的信息熵,细化标签频率,预测标签的初始相关性;然后,从两个方面计算标签相关性。一方面是利用免费百科全书Wikipedia的结构化信息来度量标签对的语义相似度。另一种是基于标签的视觉表示来计算标签对的视觉相似性。最后,为了重新排列原始标签,使用重新启动的快速随机游动,并保留顶部的标签作为最终标签。在NUS-WIDE数据集上进行的实验结果表明,我们的方法具有良好的有效性。
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