Cascaded Detail-Preserving Networks for Super-Resolution of Document Images

Zhichao Fu, Yu Kong, Yingbin Zheng, Hao Ye, Wenxin Hu, Jing Yang, Liang He
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引用次数: 6

Abstract

The accuracy of OCR is usually affected by the quality of the input document image and different kinds of marred document images hamper the OCR results. Among these scenarios, the low-resolution image is a common and challenging case. In this paper, we propose the cascaded networks for document image super-resolution. Our model is composed by the Detail-Preserving Networks with small magnification. The loss function with perceptual terms is designed to simultaneously preserve the original patterns and enhance the edge of the characters. These networks are trained with the same architecture and different parameters and then assembled into a pipeline model with a larger magnification. The low-resolution images can upscale gradually by passing through each Detail-Preserving Network until the final high-resolution images. Through extensive experiments on two scanning document image datasets, we demonstrate that the proposed approach outperforms recent state-of-the-art image super-resolution methods, and combining it with standard OCR system lead to signification improvements on the recognition results.
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用于文档图像超分辨率的级联细节保留网络
OCR的准确性通常受到输入文档图像质量的影响,而各种文档图像的损坏会影响OCR的结果。在这些场景中,低分辨率图像是一种常见且具有挑战性的情况。在本文中,我们提出了用于文档图像超分辨率的级联网络。该模型由小放大的细节保持网络组成。设计了带有感知项的损失函数,在保留原始图案的同时增强了字符的边缘。这些网络使用相同的架构和不同的参数进行训练,然后组装成一个具有更大放大倍数的管道模型。低分辨率图像可以通过每个细节保持网络逐步升级,直到最终的高分辨率图像。通过在两个扫描文档图像数据集上的大量实验,我们证明了所提出的方法优于最近最先进的图像超分辨率方法,并且将其与标准OCR系统相结合可以显著提高识别结果。
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