TABLET: A Large-Scale Dataset for Robust Visual Table Understanding
By: Iñigo Alonso , Imanol Miranda , Eneko Agirre and more
Potential Business Impact:
Helps computers understand real-world tables better.
While table understanding increasingly relies on pixel-only settings where tables are processed as visual representations, current benchmarks predominantly use synthetic renderings that lack the complexity and visual diversity of real-world tables. Additionally, existing visual table understanding (VTU) datasets offer fixed examples with single visualizations and pre-defined instructions, providing no access to underlying serialized data for reformulation. We introduce TABLET, a large-scale VTU dataset with 4 million examples across 20 tasks, grounded in 2 million unique tables where 88% preserve original visualizations. Each example includes paired image-HTML representations, comprehensive metadata, and provenance information linking back to the source datasets. Fine-tuning vision-language models like Qwen2.5-VL-7B on TABLET improves performance on seen and unseen VTU tasks while increasing robustness on real-world table visualizations. By preserving original visualizations and maintaining example traceability in a unified large-scale collection, TABLET establishes a foundation for robust training and extensible evaluation of future VTU models.
Similar Papers
Visual-TableQA: Open-Domain Benchmark for Reasoning over Table Images
CV and Pattern Recognition
Helps computers understand information in tables.
PubTables-v2: A new large-scale dataset for full-page and multi-page table extraction
CV and Pattern Recognition
Helps computers find and understand tables in documents.
MTabVQA: Evaluating Multi-Tabular Reasoning of Language Models in Visual Space
CV and Pattern Recognition
Helps computers understand charts in pictures.