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Arbitrary Style Transfer in Real-time with Adaptive Instance Normalization.

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TLDR
In this article, adaptive instance normalization (AdaIN) is proposed to align the mean and variance of the content features with those of the style features, which enables arbitrary style transfer in real-time.
Abstract
Gatys et al. recently introduced a neural algorithm that renders a content image in the style of another image, achieving so-called style transfer. However, their framework requires a slow iterative optimization process, which limits its practical application. Fast approximations with feed-forward neural networks have been proposed to speed up neural style transfer. Unfortunately, the speed improvement comes at a cost: the network is usually tied to a fixed set of styles and cannot adapt to arbitrary new styles. In this paper, we present a simple yet effective approach that for the first time enables arbitrary style transfer in real-time. At the heart of our method is a novel adaptive instance normalization (AdaIN) layer that aligns the mean and variance of the content features with those of the style features. Our method achieves speed comparable to the fastest existing approach, without the restriction to a pre-defined set of styles. In addition, our approach allows flexible user controls such as content-style trade-off, style interpolation, color & spatial controls, all using a single feed-forward neural network.

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Style is a Distribution of Features

TL;DR: This work presents a new algorithm for style transfer that fully extracts the style from the features by redefining the style loss as the Wasserstein distance between the distribution of features.
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Arbitrary Style Transfer using Graph Instance Normalization

TL;DR: A novel learnable normalization technique for style transfer using graph convolutional networks, termed Graph Instance Normalization (GrIN), which makes the style transfer approach more robust by taking into account similar information shared between instances.

Controlled Modification of Generated (Style)GAN Latent Vectors

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IST - Style Transfer with Instance Segmentation

TL;DR: The instance style transfer model (IST) combines an instance segmentation model and a stylization model to highlight people on images in different styles, while the background remains unchanged.
References
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