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Improving Document Binarization Via Adversarial Noise-Texture Augmentation

机译:通过对抗噪声纹理增强改善文献二值化

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Binarization of degraded document images is an elementary step in most problems involving document image analysis. The paper re-visits the binarization problem by introducing an adversarial learning approach. We construct a Texture Augmentation Network that transfers the texture element of a degraded reference document image to a clean binary image. In this way, the network creates multiple versions of the same textual content with various noisy textures, thus enlarging the available document binarization datasets. Finally, the newly generated images are passed through a Binarization network to get back the clean version. By jointly training the two networks we can increase the adversarial robustness of our system. The most significant contribution of our framework is that it does not require any paired data unlike other Deep Learning-based methods [1], [2], [3]. Such a novel approach has never been implemented earlier thus making it the very first of its kind in Document Image Analysis community. Experimental results suggest that the proposed method1 achieves superior performance over widely used DIBCO datasets.
机译:降级文档图像的二值化是大多数涉及文档图像分析的问题的基本步骤。本文通过引入对抗性学习方法来重新访问二值化问题。我们构建一个纹理增强网络,将劣化的参考文档图像的纹理元素传送到清洁二进制图像。以这种方式,网络创建具有各种噪声纹理的多个版本的相同文本内容,从而放大可用文档二值化数据集。最后,新生成的图像通过二值化网络来返回清洁版本。通过联合培训这两个网络,我们可以增加我们系统的对抗性稳健性。我们框架最重要的贡献是它不需要与其他基于深度学习的方法不同的配对数据[1],[2],[3]。这样一种新颖的方法从未如此之前实施过,从而使其在文件图像分析社区中的第一类。实验结果表明提出的方法 1 通过广泛使用的Dibco数据集实现卓越的性能。

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