基于线性跨度网络的汉字骨架提取

Lu Qin, Lin Shi
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引用次数: 0

摘要

汉字骨架是将汉字的结构抽象为骨架的关键表征。从汉字图像中提取汉字骨架是汉字处理领域的一项基础性工作。现有汉字骨架提取的图像骨架细化算法产生的分叉不能准确反映汉字的拓扑特征和书写轨迹。现有的基于深度神经网络的图像骨架提取方法也难以获得准确的单像素汉字骨架。本文提出了一种混合汉字骨架提取方法来解决上述问题。首先,提出了一种动态骨架提取算法,利用自定义的汉字手写过程数字化平台自动获取数据集;其次,利用该数据集训练改进的线性跨度网络,提取汉字骨架;然后,利用图像细化算法对提取的汉字骨架进行细化,得到单像素汉字骨架;结果表明,该方法不仅保留了汉字的拓扑结构和书写轨迹,而且保持了笔画交点的连通性,避免了毛刺和分叉的产生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chinese Character Skeleton Extraction Based on Linear Span Network
Chinese character skeletons are key representations which abstract structures of Chinese characters into skeletons. Extraction the skeleton from images of Chinese characters is a fundamental task in field of Chinese character process. Existing image skeleton thinning algorithms for extracting Chinese character skeletons produced bifurcations which could not accurately reflect topological features and writing trajectories of Chinese characters. Existing image skeleton extraction methods based on deep neural networks also had difficulty in obtaining accurate single-pixel Chinese character skeletons. Here we proposed a hybrid Chinese character skeleton extraction method to resolve the above problems. Firstly, a dynamic skeleton extraction algorithm was proposed to automatically obtain a dataset using a customized digitalization platform of Chinese handwriting process. Secondly, an improved linear span network was trained using the dataset to extract the Chinese character skeletons. Thirdly, the extracted skeletons were refined using an image-thinning algorithm to obtain single-pixel Chinese character skeletons. Results showed that our method not only preserved the topological structures and writing trajectories of Chinese characters but also maintained connectivity at intersections of strokes which avoided generating burrs and bifurcations.
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