论文标题
各种艺术家风格转移的各向异性中风控制
Anisotropic Stroke Control for Multiple Artists Style Transfer
论文作者
论文摘要
尽管在艺术风格的转移方面取得了重大进展,但通常很难通过大多数现有方法以精细粒度一致的方式保存语义信息,尤其是当需要多个艺术家样式在一个单个模型中转移时。为了避免此问题,我们提出了一个中风控制多艺术风格转移框架。一方面,我们开发了一个多条件的单生结构,该结构首先执行多艺术风格转移。一方面,我们设计了一个各向异性冲程模块(ASM),该模块意识到了非平凡区域和琐碎区域之间样式触摸的动态调整。 ASM赋予网络在各种样式之间具有自适应语义一致性的能力。另一方面,我们提出了一种新颖的多尺度投影鉴别},以实现纹理级别的条件产生。与单尺度的条件歧视器相反,我们的歧视者能够捕获多尺度的纹理线索,以有效地区分各种艺术风格。广泛的实验结果很好地证明了我们方法的可行性和有效性。我们的框架可以将照片转换为不同的艺术风格油画,仅通过一种模型。此外,结果具有独特的艺术风格,并保留了各向异性语义信息。该代码已经可以在GitHub上提供:https://github.com/neuralchen/asmagan。
Though significant progress has been made in artistic style transfer, semantic information is usually difficult to be preserved in a fine-grained locally consistent manner by most existing methods, especially when multiple artists styles are required to transfer within one single model. To circumvent this issue, we propose a Stroke Control Multi-Artist Style Transfer framework. On the one hand, we develop a multi-condition single-generator structure which first performs multi-artist style transfer. On the one hand, we design an Anisotropic Stroke Module (ASM) which realizes the dynamic adjustment of style-stroke between the non-trivial and the trivial regions. ASM endows the network with the ability of adaptive semantic-consistency among various styles. On the other hand, we present an novel Multi-Scale Projection Discriminator} to realize the texture-level conditional generation. In contrast to the single-scale conditional discriminator, our discriminator is able to capture multi-scale texture clue to effectively distinguish a wide range of artistic styles. Extensive experimental results well demonstrate the feasibility and effectiveness of our approach. Our framework can transform a photograph into different artistic style oil painting via only ONE single model. Furthermore, the results are with distinctive artistic style and retain the anisotropic semantic information. The code is already available on github: https://github.com/neuralchen/ASMAGAN.