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Autori principali: Bansal, Aniruddh, Soselia, Davit, Nguyen, Dang, Zhou, Tianyi
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.26781
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author Bansal, Aniruddh
Soselia, Davit
Nguyen, Dang
Zhou, Tianyi
author_facet Bansal, Aniruddh
Soselia, Davit
Nguyen, Dang
Zhou, Tianyi
contents Charts play an important role in visualization, reasoning, data analysis, and the exchange of ideas among humans. However, existing vision-language models (VLMs) still lack accurate perception of details and struggle to extract fine-grained structures from charts. Such limitations in chart grounding also hinder their ability to compare multiple charts and reason over them. In this paper, we introduce a novel "ChartAlign Benchmark (ChartAB)" to provide a comprehensive evaluation of VLMs in chart grounding tasks, i.e., extracting tabular data, localizing visualization elements, and recognizing various attributes from charts of diverse types and complexities. We design a JSON template to facilitate the calculation of evaluation metrics specifically tailored for each grounding task. By incorporating a novel two-stage inference workflow, the benchmark can further evaluate VLMs capability to align and compare elements/attributes across two charts. Our analysis of evaluations on several recent VLMs reveals new insights into their perception biases, weaknesses, robustness, and hallucinations in chart understanding. These findings highlight the fine-grained discrepancies among VLMs in chart understanding tasks and point to specific skills that need to be strengthened in current models.
format Preprint
id arxiv_https___arxiv_org_abs_2510_26781
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ChartAB: A Benchmark for Chart Grounding & Dense Alignment
Bansal, Aniruddh
Soselia, Davit
Nguyen, Dang
Zhou, Tianyi
Computer Vision and Pattern Recognition
Charts play an important role in visualization, reasoning, data analysis, and the exchange of ideas among humans. However, existing vision-language models (VLMs) still lack accurate perception of details and struggle to extract fine-grained structures from charts. Such limitations in chart grounding also hinder their ability to compare multiple charts and reason over them. In this paper, we introduce a novel "ChartAlign Benchmark (ChartAB)" to provide a comprehensive evaluation of VLMs in chart grounding tasks, i.e., extracting tabular data, localizing visualization elements, and recognizing various attributes from charts of diverse types and complexities. We design a JSON template to facilitate the calculation of evaluation metrics specifically tailored for each grounding task. By incorporating a novel two-stage inference workflow, the benchmark can further evaluate VLMs capability to align and compare elements/attributes across two charts. Our analysis of evaluations on several recent VLMs reveals new insights into their perception biases, weaknesses, robustness, and hallucinations in chart understanding. These findings highlight the fine-grained discrepancies among VLMs in chart understanding tasks and point to specific skills that need to be strengthened in current models.
title ChartAB: A Benchmark for Chart Grounding & Dense Alignment
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.26781