Infographic charts are a powerful medium for communicating abstract data by combining visual elements (e.g., charts, images) with textual information. However, their visual and structural richness poses challenges for large vision-language models (LVLMs), which are typically trained on plain charts. To bridge this gap, we introduce ChartGalaxy, a million-scale dataset designed to advance the understanding and generation of infographic charts. The dataset is constructed through an inductive process that identifies 75 chart types, 330 chart variations, and 68 layout templates from real infographic charts and uses them to create synthetic ones programmatically. We showcase the utility of this dataset through: 1) improving infographic chart understanding via fine-tuning, 2) benchmarking code generation for infographic charts, and 3) enabling example-based infographic chart generation. By capturing the visual and structural complexity of real design, ChartGalaxy provides a useful resource for enhancing multimodal reasoning and generation in LVLMs.
ChartGalaxy: A Dataset for Infographic Chart Understanding and Generation
ChartGalaxy, a million-scale dataset of infographic charts, enhances large vision-language models' understanding, code generation, and generation of infographic charts by capturing visual and structural complexity.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 12
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2505.18668ARXIV-DEFAULT
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