Abstract
Artistic style transfer aims to create new artistic images by rendering a given photograph with the target artistic style. Existing methods learn styles simply based on global statistics or local patches, lacking careful consideration of the drawing process in practice. Consequently, the stylization results either fail to capture abundant and diversified local style patterns, or contain undesired semantic information of the style image and deviate from the global style distribution. To address this issue, we imitate the drawing process of humans and propose a Two-Stage Statistics-Aware Transformation (TSSAT) module, which first builds the global style foundation by aligning the global statistics of content and style features and then further enriches local style details by swapping the local statistics (instead of local features) in a patch-wise manner, significantly improving the stylization effects. Moreover, to further enhance both content and style representations, we introduce two novel losses: an attention-based content loss and a patch-based style loss, where the former enables better content preservation by enforcing the semantic relation in the content image to be retained during stylization, and the latter focuses on increasing the local style similarity between the style and stylized images. Extensive qualitative and quantitative experiments verify the effectiveness of our method.
Full Text
Topics from this Paper
Style Representations
Global Style
Local Style
Artistic Style
Artistic Images
+ Show 5 more
Create a personalized feed of these topics
Get StartedSimilar Papers
Proceedings of the AAAI Conference on Artificial Intelligence
May 18, 2021
Sep 1, 2020
Signal Processing
Jul 1, 2021
IEEE Transactions on Pattern Analysis and Machine Intelligence
Jan 1, 2022
Jun 1, 2021
Jan 1, 2014
NeuroImage
Mar 1, 2011
E3S Web of Conferences
Apr 1, 2021
IEEE Transactions on Multimedia
Jan 1, 2023
Journal of Eye Movement Research
Jun 9, 2020
Frontiers in Psychology
Dec 16, 2020
IEEE/ACM Transactions on Computational Biology and Bioinformatics
Jan 1, 2021