ChartKG: A Knowledge-Graph-Based Representation for Chart Images
Zhiguang Zhou, Haoxuan Wang, Zhengqing Zhao, Fengling Zheng, Yongheng, Wang, Wei Chen, Yong Wang

TL;DR
ChartKG introduces a knowledge graph-based method to represent chart images, capturing visual elements and semantic relations to improve tasks like chart retrieval and question answering.
Contribution
The paper proposes a novel KG-based representation for charts and a framework to convert images into this structured form, enhancing semantic understanding.
Findings
Effective modeling of visual elements and relations in charts.
Improved performance in chart retrieval and question answering tasks.
Quantitative validation of object and text recognition components.
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…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Handwritten Text Recognition Techniques · Image Retrieval and Classification Techniques
MethodsFocus
