Towards retrieving relevant information graphics

Zhuo Li, Matthew Stagitis, S. Carberry, Kathleen F. McCoy
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引用次数: 13

Abstract

Information retrieval research has made significant progress in the retrieval of text documents and images. However, relatively little attention has been given to the retrieval of information graphics (non-pictorial images such as bar charts and line graphs) despite their proliferation in popular media such as newspapers and magazines. Our goal is to build a system for retrieving bar charts and line graphs that reasons about the content of the graphic itself in deciding its relevance to the user query. This paper presents the first steps toward such a system, with a focus on identifying the category of intended message of potentially relevant bar charts and line graphs. Our learned model achieves accuracy higher than 80\% on a corpus of collected user queries.
对检索相关信息图形
信息检索研究在文本文档和图像检索方面取得了重大进展。然而,尽管诸如报纸和杂志等大众媒体大量使用信息图形(如条形图和线形图等非图画图像),但对其检索的注意相对较少。我们的目标是建立一个检索条形图和线形图的系统,该系统可以在确定图形本身的内容与用户查询的相关性时进行推理。本文介绍了迈向这样一个系统的第一步,重点是确定潜在相关柱状图和线形图的预期信息的类别。我们学习的模型在收集用户查询的语料库上实现了高于80%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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