ChartKG: A Knowledge-Graph-Based Representation for Chart Images.

Zhiguang Zhou, Haoxuan Wang, Zhengqing Zhao, Fengling Zheng, Yongheng Wang, Wei Chen, Yong Wang
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Abstract

Chart images, such as bar charts, pie charts, and line charts, are explosively produced due to the wide usage of data visualizations. Accordingly, knowledge mining from chart images is becoming increasingly important, which can benefit downstream tasks like chart retrieval and knowledge graph completion. However, existing methods for chart knowledge mining mainly focus on converting chart images into raw data and often ignore their visual encodings and semantic meanings, which can result in information loss for many downstream tasks. In this paper, we propose ChartKG, a novel knowledge graph (KG) based representation for chart images, which can model the visual elements in a chart image and semantic relations among them including visual encodings and visual insights in a unified manner.Further, we develop a general framework to convert chart images to the proposed KG-based representation. It integrates a series of image processing techniques to identify visual elements and relations, e.g., CNNs to classify charts, yolov5 and optical character recognition to parse charts, and rule-based methods to construct graphs. We present four cases to illustrate how our knowledge-graph-based representation can model the detailed visual elements and semantic relations in charts, and further demonstrate how our approach can benefit downstream applications such as semantic-aware chart retrieval and chart question answering. We also conduct quantitative evaluations to assess the two fundamental building blocks of our chart-to-KG framework, i.e., object recognition and optical character recognition. The results provide support for the usefulness and effectiveness of ChartKG.

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ChartKG:基于知识图谱的图表图像表示法。
由于数据可视化的广泛应用,条形图、饼图和折线图等图表图像的产量呈爆炸式增长。因此,从图表图像中挖掘知识变得越来越重要,这将有利于图表检索和知识图谱完善等下游任务。然而,现有的图表知识挖掘方法主要侧重于将图表图像转换为原始数据,往往忽略了图表图像的视觉编码和语义含义,这可能会导致许多下游任务的信息丢失。在本文中,我们提出了基于知识图谱(KG)的新型图表图像表示法--ChartKG,它可以对图表图像中的视觉元素以及它们之间的语义关系(包括视觉编码和视觉洞察)进行统一建模。它整合了一系列图像处理技术来识别视觉元素和关系,例如 CNNs 来对图表进行分类,yolov5 和光学字符识别来解析图表,以及基于规则的方法来构建图表。我们介绍了四个案例,以说明我们基于知识图谱的表示法如何为图表中的详细视觉元素和语义关系建模,并进一步说明我们的方法如何有利于语义感知图表检索和图表问题解答等下游应用。我们还进行了定量评估,以评估图表到知识库框架的两个基本组成部分,即对象识别和光学字符识别。评估结果为 ChartKG 的实用性和有效性提供了支持。
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