Artistic Style Transfer with Internal-external Learning and Contrastive Learning

Neural Information Processing Systems 

Although existing artistic style transfer methods have achieved significant improvement with deep neural networks, they still suffer from artifacts such as disharmonious colors and repetitive patterns. Motivated by this, we propose an internal-external style transfer method with two contrastive losses.