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Neural network-based Chinese ink-painting art style learning

机译:基于神经网络的中国水墨艺术风格学习

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For purposes of intelligent art creation and existed painting style reusing, we presents a neural network-based Chinese ink-painting art style learning method, which is quite different from the traditional “pixel-wise” or “sample-wise” style transferring work. We first give a generalized definition for style features of Chinese ink painting, and then establish the style learning mechanisms with combination of back propagation neural network and image analysis techniques. The paralyzed global style features from input painting are analyzed by the well trained style learning system, the learning outputs are extracted from style information library for Chinese painting. The experiment results show that the method works well, and it is obviously a new exploration for painting style learning.
机译:出于智能艺术创作和现有绘画风格重用的目的,我们提出了一种基于神经网络的中国水墨艺术风格学习方法,该方法与传统的“像素级”或“样本级”风格转换工作大不相同。我们首先对中国水墨画的风格特征给出一个广义的定义,然后结合反向传播神经网络和图像分析技术建立风格学习机制。通过训练有素的样式学习系统分析输入绘画中瘫痪的全局样式特征,并从中国画的样式信息库中提取学习输出。实验结果表明,该方法行之有效,显然是绘画风格学习的一种新探索。

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