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Main Authors: Li, Heng, Wu, Xiangping, Chen, Qingcai
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.06038
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author Li, Heng
Wu, Xiangping
Chen, Qingcai
author_facet Li, Heng
Wu, Xiangping
Chen, Qingcai
contents Deformed document image rectification is essential for real-world document understanding tasks, such as layout analysis and text recognition. However, current multi-task methods -- such as background removal, 3D coordinate prediction, and text line segmentation -- often overlook the complementary features between tasks and their interactions. To address this gap, we propose a self-adaptive learnable multi-task fusion rectification network named SalmRec. This network incorporates an inter-task feature aggregation module that adaptively improves the perception of geometric distortions, enhances feature complementarity, and reduces negative interference. We also introduce a gating mechanism to balance features both within global tasks and between local tasks effectively. Experimental results on two English benchmarks (DIR300 and DocUNet) and one Chinese benchmark (DocReal) demonstrate that our method significantly improves rectification performance. Ablation studies further highlight the positive impact of different tasks on dewarping and the effectiveness of our proposed module.
format Preprint
id arxiv_https___arxiv_org_abs_2505_06038
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Document Image Rectification Bases on Self-Adaptive Multitask Fusion
Li, Heng
Wu, Xiangping
Chen, Qingcai
Computer Vision and Pattern Recognition
Deformed document image rectification is essential for real-world document understanding tasks, such as layout analysis and text recognition. However, current multi-task methods -- such as background removal, 3D coordinate prediction, and text line segmentation -- often overlook the complementary features between tasks and their interactions. To address this gap, we propose a self-adaptive learnable multi-task fusion rectification network named SalmRec. This network incorporates an inter-task feature aggregation module that adaptively improves the perception of geometric distortions, enhances feature complementarity, and reduces negative interference. We also introduce a gating mechanism to balance features both within global tasks and between local tasks effectively. Experimental results on two English benchmarks (DIR300 and DocUNet) and one Chinese benchmark (DocReal) demonstrate that our method significantly improves rectification performance. Ablation studies further highlight the positive impact of different tasks on dewarping and the effectiveness of our proposed module.
title Document Image Rectification Bases on Self-Adaptive Multitask Fusion
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.06038