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Auteurs principaux: Smock, Brandon, Faucon-Morin, Valerie, Sokolov, Max, Liang, Libin, Khanam, Tayyibah, Ramesh, Amrit, Courtland, Maury
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2512.10888
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author Smock, Brandon
Faucon-Morin, Valerie
Sokolov, Max
Liang, Libin
Khanam, Tayyibah
Ramesh, Amrit
Courtland, Maury
author_facet Smock, Brandon
Faucon-Morin, Valerie
Sokolov, Max
Liang, Libin
Khanam, Tayyibah
Ramesh, Amrit
Courtland, Maury
contents Table extraction (TE) is a key challenge in visual document understanding. Traditional approaches detect tables first, then recognize their structure. Recently, interest has surged in developing methods, such as vision-language models (VLMs), that can extract tables directly in their full page or document context. However, progress has been difficult to demonstrate due to a lack of annotated data. To address this, we create a new large-scale dataset, PubTables-v2. PubTables-v2 supports a number of challenging table extraction tasks. Notably, it is the first large-scale benchmark for multi-page table structure recognition. We evaluate several smaller specialized VLMs to establish baseline performance on these tasks. As we show, multi-page table recognition is a key gap in current models' capabilities. Interestingly, we show that introducing an image classifier that predicts when to merge tables across pages can significantly improve performance. Data, code, and models will be released at https://huggingface.co/datasets/kensho/PubTables-v2.
format Preprint
id arxiv_https___arxiv_org_abs_2512_10888
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PubTables-v2: A new large-scale dataset for full-page and multi-page table extraction
Smock, Brandon
Faucon-Morin, Valerie
Sokolov, Max
Liang, Libin
Khanam, Tayyibah
Ramesh, Amrit
Courtland, Maury
Computer Vision and Pattern Recognition
Table extraction (TE) is a key challenge in visual document understanding. Traditional approaches detect tables first, then recognize their structure. Recently, interest has surged in developing methods, such as vision-language models (VLMs), that can extract tables directly in their full page or document context. However, progress has been difficult to demonstrate due to a lack of annotated data. To address this, we create a new large-scale dataset, PubTables-v2. PubTables-v2 supports a number of challenging table extraction tasks. Notably, it is the first large-scale benchmark for multi-page table structure recognition. We evaluate several smaller specialized VLMs to establish baseline performance on these tasks. As we show, multi-page table recognition is a key gap in current models' capabilities. Interestingly, we show that introducing an image classifier that predicts when to merge tables across pages can significantly improve performance. Data, code, and models will be released at https://huggingface.co/datasets/kensho/PubTables-v2.
title PubTables-v2: A new large-scale dataset for full-page and multi-page table extraction
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.10888