Papers
arxiv:2602.12203

ExStrucTiny: A Benchmark for Schema-Variable Structured Information Extraction from Document Images

Published on Feb 12
· Submitted by
Mathieu Sibue
on Feb 13
Authors:
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Abstract

A new benchmark dataset called ExStrucTiny is introduced for structured information extraction from document images, addressing limitations of existing datasets and evaluating vision-language models on diverse document types and flexible schemas.

AI-generated summary

Enterprise documents, such as forms and reports, embed critical information for downstream applications like data archiving, automated workflows, and analytics. Although generalist Vision Language Models (VLMs) perform well on established document understanding benchmarks, their ability to conduct holistic, fine-grained structured extraction across diverse document types and flexible schemas is not well studied. Existing Key Entity Extraction (KEE), Relation Extraction (RE), and Visual Question Answering (VQA) datasets are limited by narrow entity ontologies, simple queries, or homogeneous document types, often overlooking the need for adaptable and structured extraction. To address these gaps, we introduce ExStrucTiny, a new benchmark dataset for structured Information Extraction (IE) from document images, unifying aspects of KEE, RE, and VQA. Built through a novel pipeline combining manual and synthetic human-validated samples, ExStrucTiny covers more varied document types and extraction scenarios. We analyze open and closed VLMs on this benchmark, highlighting challenges such as schema adaptation, query under-specification, and answer localization. We hope our work provides a bedrock for improving generalist models for structured IE in documents.

Community

We introduce ExStrucTiny, a new benchmark for structured information extraction from document images that unifies in one task (1) key entity extraction, (2) relation extraction, and (3) visual question answering across diverse input schemas and document types. Results show that current VLMs still struggle with schema adaptation, underspecified queries, and answer localization.

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