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Research on the Algorithm of Art Style Transfer of Xin'an Painting School

机译:新安绘画学校艺术风格转移算法研究

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Xin‘an Painting School plays an important role in the history of Chinese painting. It takes Huizhou landscape as the creative theme and has a unique artistic style. However, the current art style transfer field does not concern about this very regional characteristics of painting school. Therefore, we propose an improved CycleGAN to realize the transfer of Xin'an painting style. Firstly, DenseNet is introduced to alleviate the gradient vanishing problem and optimize the content and style features transfer between the layers of neural network. Secondly, group normalization is used to reduce the calculation error and keep the network training process stable. Finally, the least square loss is introduced in the adversarial losses, and the identity loss is introduced to obtain the feature of the target image as much as possible, which constrains the arbitrary transformation of the feature of the input image. The experiment shows that the generated pictures have a good artistic style of Xin’ an Painting School.
机译:新安绘画学校在中国绘画史上发挥着重要作用。它需要惠州景观作为创造性主题,拥有独特的艺术风格。然而,目前的艺术风格转移领域并不关注绘画学校的这种区域特征。因此,我们提出了一种改进的Cyclegan来实现新安绘画风格的转移。首先,引入DENSENET以缓解梯度消失问题,并优化神经网络层之间的内容和风格特征。其次,使用组归一化来减少计算错误并保持网络训练过程稳定。最后,在对抗性损失中引入最小二乘损失,并且引入了相同损失以尽可能地获得目标图像的特征,这会限制输入图像的特征的任意变换。实验表明,生成的图片有一个良好的Xin'绘画学校的艺术风格。

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