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The Techniques and Evaluation Method for Beautification of Handwriting Chinese Characters Based on Cubic Bézier Curve and Convolutional Neural Network

机译:基于立方Bézier曲线和卷积神经网络的手写汉字美化的技术与评价方法

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This paper presents a method to beautify Chinese characters and a way to evaluate the beautification result. In order to make handwritten Chinese characters more in line with the aesthetic standards of Chinese characters, 52 Chinese characters were selected as experimental data. These data covered 33 standard strokes and 19 typical structures of Chinese characters. The handwritten Chinese characters were beautified mainly from two aspects-the global adjustment and the elimination of jitter. Firstly, the two-dimensional (2D) data points set is extended into three-dimensional (3D) space. Then the Gaussian Mixture Model (GMM) is established for the data set, and the layout of handwritten Chinese characters is adjusted by point set registration algorithm. Secondly, according to the properties of the cubic Bézier curve function, detect the jitter of each strokes, and eliminate the jitter by interpolation algorithm. The evaluation of the results after beautification has always been limited to subjective evaluation. This paper attempts to combine the evaluation of beautification result with machine learning methods. Handwritten Chinese character recognition (HCCR) is used as the tool. Experiments show that the overall layout and jitter of handwritten Chinese characters have been adjusted and deleted, and the evaluation of handwritten Chinese characters beautification results has its research significance.
机译:本文介绍了美化汉字的方法及评估美化结果的方法。为了使手写的汉字更加符合汉字的美学标准,选择了52个汉字作为实验数据。这些数据涵盖了33个标准笔划和19个典型的汉字结构。手写的汉字主要来自两个方面 - 全球调整和消除抖动。首先,二维(2D)数据点集被扩展为三维(3D)空间。然后为数据集建立高斯混合模型(GMM),并通过点设置登记算法调整手写汉字的布局。其次,根据立方Bézier曲线函数的属性,检测每个笔划的抖动,并通过插值算法消除抖动。在美化后的结果评价一直限于主观评估。本文试图将美化结果评估与机器学习方法相结合。手写的汉字识别(HCCR)用作工具。实验表明,手写汉字的整体布局和抖动已经调整和删除,并删除了手写的汉字美化结果的评估其研究意义。

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