English

M$^{6}$Doc: A Large-Scale Multi-Format, Multi-Type, Multi-Layout, Multi-Language, Multi-Annotation Category Dataset for Modern Document Layout Analysis

Computer Vision and Pattern Recognition 2023-05-23 v2

Abstract

Document layout analysis is a crucial prerequisite for document understanding, including document retrieval and conversion. Most public datasets currently contain only PDF documents and lack realistic documents. Models trained on these datasets may not generalize well to real-world scenarios. Therefore, this paper introduces a large and diverse document layout analysis dataset called M6DocM^{6}Doc. The M6M^6 designation represents six properties: (1) Multi-Format (including scanned, photographed, and PDF documents); (2) Multi-Type (such as scientific articles, textbooks, books, test papers, magazines, newspapers, and notes); (3) Multi-Layout (rectangular, Manhattan, non-Manhattan, and multi-column Manhattan); (4) Multi-Language (Chinese and English); (5) Multi-Annotation Category (74 types of annotation labels with 237,116 annotation instances in 9,080 manually annotated pages); and (6) Modern documents. Additionally, we propose a transformer-based document layout analysis method called TransDLANet, which leverages an adaptive element matching mechanism that enables query embedding to better match ground truth to improve recall, and constructs a segmentation branch for more precise document image instance segmentation. We conduct a comprehensive evaluation of M6DocM^{6}Doc with various layout analysis methods and demonstrate its effectiveness. TransDLANet achieves state-of-the-art performance on M6DocM^{6}Doc with 64.5% mAP. The M6DocM^{6}Doc dataset will be available at https://github.com/HCIILAB/M6Doc.

Keywords

Cite

@article{arxiv.2305.08719,
  title  = {M$^{6}$Doc: A Large-Scale Multi-Format, Multi-Type, Multi-Layout, Multi-Language, Multi-Annotation Category Dataset for Modern Document Layout Analysis},
  author = {Hiuyi Cheng and Peirong Zhang and Sihang Wu and Jiaxin Zhang and Qiyuan Zhu and Zecheng Xie and Jing Li and Kai Ding and Lianwen Jin},
  journal= {arXiv preprint arXiv:2305.08719},
  year   = {2023}
}

Comments

Accepted by CVPR 2023

R2 v1 2026-06-28T10:34:50.824Z