用扩散激活理论标记图像

Zhu Songhao, Sun Wei, Liang Zhiwei
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引用次数: 0

摘要

Web和个人计算机上大量的数字图像引发了对使用语义概念检索感兴趣的图像的有效工具的需求。然而,由于图像内容的低级特征与其高级概念意义之间存在语义差距,现有的许多图像自动标注算法的性能都不尽如人意。本文基于认知科学理论,提出了一种提高标注质量的新方法。其主要思想是将图像的标签视为语义网络中的节点,并使用扩展激活理论调节每个标签与图像之间的相关性。扩散激活过程完成后,每个图像标签将根据其与其他标签的关系被指定一个适当的值。在5万张Flickr图像数据集上进行的实验结果表明,该方法可以有效地提高图像标注的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Labelling images with spreading activation theory
The overwhelming amounts of digital images on the Web and personal computers have triggered the requirement of an effective tool to retrieve images of interest using semantic concepts. Due to the semantic gap between low-level features of image content and its high-level conceptual meaning, however, the performances of many existing automatic image annotation algorithms are not so satisfactory. In this paper, a novel approach based on the cognitive science theory is proposed to improve the quality of annotation. The main idea is that tags of an image are considered as nodes within a semantic network and the relevance between each tag and the image is regulated using the spreading activation theory. After the spreading activation process finishes, each image tag will be appointed an appropriate values depending on its relations to other tags. Experimental results conducted on 50,000 Flickr image dataset demonstrate that the proposed scheme can effectively improve the performance of image annotation.
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