Adjustable Real-Time Style Transfer
Abstract
Artistic style transfer is the problem of synthesizing an image with content similar to a given image and style similar to another. Although recent feed-forward neural networks can generate stylized images in real-time, these models produce a single stylization given a pair of style/content images, and the user doesn't have control over the synthesized output. Moreover, the style transfer depends on the hyper-parameters of the model with varying ``optimum" for different input images. Therefore, if the stylized output is not appealing to the user, she/he has to try multiple models or retrain one with different hyper-parameters to get a favorite stylization. In this paper, we address these issues by proposing a novel method which allows adjustment of crucial hyper-parameters, after the training and in real-time, through a set of manually adjustable parameters. These parameters enable the user to modify the synthesized outputs from the same pair of style/content images, in search of a favorite stylized image. Our quantitative and qualitative experiments indicate how adjusting these parameters is comparable to retraining the model with different hyper-parameters. We also demonstrate how these parameters can be randomized to generate results which are diverse but still very similar in style and content.
Cite
Text
Babaeizadeh and Ghiasi. "Adjustable Real-Time Style Transfer." ICLR 2019 Workshops: DeepGenStruct, 2019.Markdown
[Babaeizadeh and Ghiasi. "Adjustable Real-Time Style Transfer." ICLR 2019 Workshops: DeepGenStruct, 2019.](https://mlanthology.org/iclrw/2019/babaeizadeh2019iclrw-adjustable/)BibTeX
@inproceedings{babaeizadeh2019iclrw-adjustable,
title = {{Adjustable Real-Time Style Transfer}},
author = {Babaeizadeh, Mohammad and Ghiasi, Golnaz},
booktitle = {ICLR 2019 Workshops: DeepGenStruct},
year = {2019},
url = {https://mlanthology.org/iclrw/2019/babaeizadeh2019iclrw-adjustable/}
}