Super-resolution of document images using transfer deep learning of an ESRGAN model

Zakia Kezzoula, Djamel Gaceb, Nadjat Gritli
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Abstract

This paper presents a novel super-resolution approach of document images. It is based on transfer deep learning of an ESRGAN model. This model, which showed good robustness on natural images, has been adapted to document images by using better levels of fine-tuning and a post-processing to enhance contrast. The experiments were carried out on our document image dataset that we built from document images presenting different challenges. Documents of different categories with different complexity levels and degradation kinds. The results obtained are better compared to ten existing approaches, which we have developed and tested on the same dataset with the same evaluation protocol.
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使用ESRGAN模型的迁移深度学习实现文档图像的超分辨率
提出了一种新的文档图像超分辨率处理方法。它是基于ESRGAN模型的迁移深度学习。该模型在自然图像上表现出良好的鲁棒性,通过使用更高水平的微调和后处理来增强对比度,可以适用于文档图像。实验是在我们的文档图像数据集上进行的,我们从呈现不同挑战的文档图像中构建了文档图像数据集。具有不同复杂程度和退化类型的不同类别文件。与我们在相同的数据集上使用相同的评估协议开发和测试的十种现有方法相比,获得的结果更好。
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