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Japanese Character Segmentation for Historical Handwritten Official Documents Using Fully Convolutional Networks

机译:使用完全卷积网络的历史手写官方文件的日本字符细分

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This paper proposes a character segmentation method using a fully convolutional network (FCN) and a post-processing phase. The network is trained with five-channel images that indicate five kinds of zones within the bounding box for each character-the top half, bottom half, left half, right half, and center. The post-processing step reconstructs the bounding boxes for characters from the five-channel image of the FCN output. The proposed method possesses the following advantages: (1) It is possible to process input images including multiple text lines directly; in other words, a text line segmentation process is unnecessary. (2) It does not rely upon character recognition. (3) It is robust to variations in the sizes of characters and the gaps between characters and also to cursive characters or character overlap. In the experiment of character segmentation, the accuracy ratio was 95% for real images of historical handwritten official documents written in Japanese.
机译:本文提出了一种使用完全卷积网络(FCN)和后处理阶段的字符分段方法。网络接受了五个通道图像,其中每个角色中的边界框中的五种区域 - 上半部分,下半部分,左半,右半部分和中心。后处理步骤从FCN输出的五声道图像重建用于字符的边界框。该方法具有以下优点:(1)可以直接处理包括多条文本线的输入图像;换句话说,不需要文本线分割过程。 (2)它不依赖于角色识别。 (3)对于字符尺寸的变化和字符之间的间隙以及卷曲字符或字符重叠是强大的。在角色分割的实验中,对于日本历史手写官方文件的真实图像,精度比为95%。

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