CVMar 20, 2025

UniHDSA: A Unified Relation Prediction Approach for Hierarchical Document Structure Analysis

arXiv:2503.15893v22 citationsh-index: 9Has CodePattern Recognition
Originality Incremental advance
AI Analysis

This addresses document layout analysis for information retrieval and knowledge extraction, with incremental improvements in unifying tasks.

The paper tackles hierarchical document structure analysis by proposing UniHDSA, a unified relation prediction approach that treats sub-tasks as relation prediction problems, achieving state-of-the-art performance on the Comp-HRDoc benchmark and competitive results on DocLayNet.

Document structure analysis, aka document layout analysis, is crucial for understanding both the physical layout and logical structure of documents, serving information retrieval, document summarization, knowledge extraction, etc. Hierarchical Document Structure Analysis (HDSA) specifically aims to restore the hierarchical structure of documents created using authoring software with hierarchical schemas. Previous research has primarily followed two approaches: one focuses on tackling specific subtasks of HDSA in isolation, such as table detection or reading order prediction, while the other adopts a unified framework that uses multiple branches or modules, each designed to address a distinct task. In this work, we propose a unified relation prediction approach for HDSA, called UniHDSA, which treats various HDSA sub-tasks as relation prediction problems and consolidates relation prediction labels into a unified label space. This allows a single relation prediction module to handle multiple tasks simultaneously, whether at a page-level or document-level structure analysis. To validate the effectiveness of UniHDSA, we develop a multimodal end-to-end system based on Transformer architectures. Extensive experimental results demonstrate that our approach achieves state-of-the-art performance on a hierarchical document structure analysis benchmark, Comp-HRDoc, and competitive results on a large-scale document layout analysis dataset, DocLayNet, effectively illustrating the superiority of our method across all sub-tasks. The Comp-HRDoc benchmark and UniHDSA's configurations are publicly available at https://github.com/microsoft/CompHRDoc.

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