TH-GAN: Generative Adversarial Network Based Transfer Learning for Historical Chinese Character Recognition

Junyang Cai, Liangrui Peng, Yejun Tang, Changsong Liu, Pengchao Li
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引用次数: 12

Abstract

Historical Chinese character recognition faces problems including low image quality and lack of labeled training samples. We propose a generative adversarial network (GAN) based transfer learning method to ease these problems. The proposed TH-GAN architecture includes a discriminator and a generator. The network structure of the discriminator is based on a convolutional neural network (CNN). Inspired by Wasserstein GAN, the loss function of the discriminator aims to measure the probabilistic distribution distance of the generated images and the target images. The network structure of the generator is a CNN based encoder-decoder. The loss function of the generator aims to minimize the distribution distance between the real samples and the generated samples. In order to preserve the complex glyph structure of a historical Chinese character, a weighted mean squared error (MSE) criterion by incorporating both the edge and the skeleton information in the ground truth image is proposed as the weighted pixel loss in the generator. These loss functions are used for joint training of the discriminator and the generator. Experiments are conducted on two tasks to evaluate the performance of the proposed TH-GAN. The first task is carried out on style transfer mapping for multi-font printed traditional Chinese character samples. The second task is carried out on transfer learning for historical Chinese character samples by adding samples generated by TH-GAN. Experimental results show that the proposed TH-GAN is effective.
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基于生成对抗网络的历史汉字识别迁移学习
历史汉字识别面临图像质量低、缺乏标记训练样本等问题。我们提出了一种基于生成对抗网络(GAN)的迁移学习方法来缓解这些问题。提出的TH-GAN结构包括一个鉴别器和一个发生器。鉴别器的网络结构基于卷积神经网络(CNN)。受Wasserstein GAN的启发,鉴别器的损失函数旨在度量生成图像与目标图像的概率分布距离。发生器的网络结构是基于CNN的编码器-解码器。生成器的损失函数旨在使真实样本与生成样本之间的分布距离最小。为了保留历史汉字复杂的字形结构,提出了一种结合真实图像边缘和骨架信息的加权均方误差(MSE)准则,作为生成器中的加权像素损失。这些损失函数用于鉴别器和生成器的联合训练。在两个任务上进行了实验来评估所提出的TH-GAN的性能。第一个任务是对多字体印刷繁体字样本进行样式迁移映射。第二项任务是通过添加由TH-GAN生成的样本,对历史汉字样本进行迁移学习。实验结果表明,所提出的TH-GAN是有效的。
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