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DIMT25@ICDAR2025: HW-TSC's End-to-End Document Image Machine Translation System Leveraging Large Vision-Language Model

24 April 2025
Zhanglin Wu
Tengfei Song
Ning Xie
W. Zhang
Pengfei Li
Shuang Wu
C. Li
Junhao Zhu
Hao-Yu Yang
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Abstract

This paper presents the technical solution proposed by Huawei Translation Service Center (HW-TSC) for the "End-to-End Document Image Machine Translation for Complex Layouts" competition at the 19th International Conference on Document Analysis and Recognition (DIMT25@ICDAR2025). Leveraging state-of-the-art open-source large vision-language model (LVLM), we introduce a training framework that combines multi-task learning with perceptual chain-of-thought to develop a comprehensive end-to-end document translation system. During the inference phase, we apply minimum Bayesian decoding and post-processing strategies to further enhance the system's translation capabilities. Our solution uniquely addresses both OCR-based and OCR-free document image translation tasks within a unified framework. This paper systematically details the training methods, inference strategies, LVLM base models, training data, experimental setups, and results, demonstrating an effective approach to document image machine translation.

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@article{wu2025_2504.17315,
  title={ DIMT25@ICDAR2025: HW-TSC's End-to-End Document Image Machine Translation System Leveraging Large Vision-Language Model },
  author={ Zhanglin Wu and Tengfei Song and Ning Xie and Weidong Zhang and Pengfei Li and Shuang Wu and Chong Li and Junhao Zhu and Hao Yang },
  journal={arXiv preprint arXiv:2504.17315},
  year={ 2025 }
}
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