Self-supervised matting-specific portrait enhancement and generation
Publication Type
Journal Article
Publication Date
1-2022
Abstract
We resolve the ill-posed alpha matting problem from a completely different perspective. Given an input portrait image, instead of estimating the corresponding alpha matte, we focus on the other end, to subtly enhance this input so that the alpha matte can be easily estimated by any existing matting models. This is accomplished by exploring the latent space of GAN models. It is demonstrated that interpretable directions can be found in the latent space and they correspond to semantic image transformations. We further explore this property in alpha matting. Particularly, we invert an input portrait into the latent code of StyleGAN, and our aim is to discover whether there is an enhanced version in the latent space which is more compatible with a reference matting model. We optimize multi-scale latent vectors in the latent spaces under four tailored losses, ensuring matting-specificity and subtle modifications on the portrait. We demonstrate that the proposed method can refine real portrait images for arbitrary matting models, boosting the performance of automatic alpha matting by a large margin. In addition, we leverage the generative property of StyleGAN, and propose to generate enhanced portrait data which can be treated as the pseudo GT. It addresses the problem of expensive alpha matte annotation, further augmenting the matting performance of existing models.
Keywords
Space exploration, Codes, Data models, Semantics, Entropy, Predictive models, Generative adversarial networks, Alpha matting, latent space, generative model
Discipline
Information Security
Research Areas
Information Systems and Management
Publication
IEEE Transactions on Image Processing
Volume
31
First Page
5332
Last Page
5342
ISSN
1057-7149
Identifier
10.1109/TIP.2022.3194711
Publisher
Institute of Electrical and Electronics Engineers
Citation
XU, Yangyang; ZHOU, Zeyang; and HE, Shengfeng.
Self-supervised matting-specific portrait enhancement and generation. (2022). IEEE Transactions on Image Processing. 31, 5332-5342.
Available at: https://ink.library.smu.edu.sg/sis_research/7880
Additional URL
https://doi.org/10.1109/TIP.2022.3194711