Back to Search Start Over

StructChart: Perception, Structuring, Reasoning for Visual Chart Understanding

Authors :
Xia, Renqiu
Zhang, Bo
Peng, Haoyang
Ye, Hancheng
Yan, Xiangchao
Ye, Peng
Shi, Botian
Qiao, Yu
Yan, Junchi
Publication Year :
2023

Abstract

Charts are common in literature across different scientific fields, conveying rich information easily accessible to readers. Current chart-related tasks focus on either chart perception which refers to extracting information from the visual charts, or performing reasoning given the extracted data, e.g. in a tabular form. In this paper, we aim to establish a unified and label-efficient learning paradigm for joint perception and reasoning tasks, which can be generally applicable to different downstream tasks, beyond the question-answering task as specifically studied in peer works. Specifically, StructChart first reformulates the chart information from the popular tubular form (specifically linearized CSV) to the proposed Structured Triplet Representations (STR), which is more friendly for reducing the task gap between chart perception and reasoning due to the employed structured information extraction for charts. We then propose a Structuring Chart-oriented Representation Metric (SCRM) to quantitatively evaluate the performance for the chart perception task. To enrich the dataset for training, we further explore the possibility of leveraging the Large Language Model (LLM), enhancing the chart diversity in terms of both chart visual style and its statistical information. Extensive experiments are conducted on various chart-related tasks, demonstrating the effectiveness and promising potential for a unified chart perception-reasoning paradigm to push the frontier of chart understanding.<br />Comment: SimChart9K is available for downloading at: https://github.com/UniModal4Reasoning/SimChart9K 26 pages, 15 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.11268
Document Type :
Working Paper