使用生成对抗网络的Nom文档背景去除

Loc Ho, S. Tran, Dinh Dien
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引用次数: 0

摘要

在这项研究中,我们提出了一种新的技术来提高无字符识别系统的性能。无字符识别是模式识别中的一个难题。特别是这些文字在读者创作的包含笔画和符号的历史文献的纸张上不仅模糊或扭曲。生成对抗网络(Generative Adversarial Network, GAN)是深度神经网络的高级版本之一,用于生成物体的人工照片[28]。最近,许多版本的GAN已经被故障化,以帮助学习过程更加稳定和真实,从而最大限度地从数据中提取特征。我们一直在使用GAN的最新版本从具有复杂背景和亮度的图像中提取字符。该任务是从复杂和嘈杂的背景源中检索干净的文本图像。据我们所知,我们在Nom数据集上执行测试,该数据集具有多种噪声形式的特征。结果表明,该方法可用于改进任何非字符识别系统。
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Nom Document Background Removal Using Generative Adversarial Network
In this research, we present a new technique to improve the performance of a Nom-character recognition system. Nom-character recognition is a challenging problem in pattern recognition. Especially these characters are not only blurred or distorted in a paper of a historical document containing ink strokes and symbols created by readers. Generative Adversarial Network (GAN) is one of the advanced versions of deep neural networks applied to generate artificial photos of objects [28]. Many versions of GAN have been malfunctioned recently to help the learning process be more stable and realistic to maximize features extracted from the data. We have been using a recent version of GAN to extract characters from images with complex backgrounds and brightness. This task is to retrieve clean text images from complex and noisy background sources. To the best of our knowledge, we perform the test on the Nom Dataset, which characterizes by multiple noise forms. The results demonstrate that this approach can help to improve any Nom-character recognition system.
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