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Document Layout Analysis with Aesthetic-Guided Image Augmentation

Authors :
Ma, Tianlong
Wu, Xingjiao
Li, Xin
Du, Xiangcheng
Zhou, Zhao
Xue, Liang
Jin, Cheng
Ma, Tianlong
Wu, Xingjiao
Li, Xin
Du, Xiangcheng
Zhou, Zhao
Xue, Liang
Jin, Cheng
Publication Year :
2021

Abstract

Document layout analysis (DLA) plays an important role in information extraction and document understanding. At present, document layout analysis has reached a milestone achievement, however, document layout analysis of non-Manhattan is still a challenge. In this paper, we propose an image layer modeling method to tackle this challenge. To measure the proposed image layer modeling method, we propose a manually-labeled non-Manhattan layout fine-grained segmentation dataset named FPD. As far as we know, FPD is the first manually-labeled non-Manhattan layout fine-grained segmentation dataset. To effectively extract fine-grained features of documents, we propose an edge embedding network named L-E^3Net. Experimental results prove that our proposed image layer modeling method can better deal with the fine-grained segmented document of the non-Manhattan layout.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333734831
Document Type :
Electronic Resource