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Hierarchical Vectorization for Portrait Images

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Is a
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Academic paper
0

Academic Paper attributes

arXiv ID
2205.118800
arXiv Classification
Computer science
Computer science
0
Publication URL
arxiv.org/pdf/2205.1...80.pdf0
Publisher
ArXiv
ArXiv
0
DOI
doi.org/10.48550/ar...05.118800
Paid/Free
Free0
Academic Discipline
Computer graphics
Computer graphics
0
Computer Vision
Computer Vision
0
Computer science
Computer science
0
Submission Date
May 24, 2022
0
Author Names
Fei Hou0
Ying He0
Qian Fu0
Linlin Liu0
Paper abstract

Aiming at developing intuitive and easy-to-use portrait editing tools, we propose a novel vectorization method that can automatically convert raster images into a 3-tier hierarchical representation. The base layer consists of a set of sparse diffusion curves (DC) which characterize salient geometric features and low-frequency colors and provide means for semantic color transfer and facial expression editing. The middle level encodes specular highlights and shadows to large and editable Poisson regions (PR) and allows the user to directly adjust illumination via tuning the strength and/or changing shape of PR. The top level contains two types of pixel-sized PRs for high-frequency residuals and fine details such as pimples and pigmentation. We also train a deep generative model that can produce high-frequency residuals automatically. Thanks to the meaningful organization of vector primitives, editing portraits becomes easy and intuitive. In particular, our method supports color transfer, facial expression editing, highlight and shadow editing and automatic retouching. Thanks to the linearity of the Laplace operator, we introduce alpha blending, linear dodge and linear burn to vector editing and show that they are effective in editing highlights and shadows. To quantitatively evaluate the results, we extend the commonly used FLIP metric (which measures differences between two images) by considering illumination. The new metric, called illumination-sensitive FLIP or IS-FLIP, can effectively capture the salient changes in color transfer results, and is more consistent with human perception than FLIP and other quality measures on portrait images. We evaluate our method on the FFHQR dataset and show that our method is effective for common portrait editing tasks, such as retouching, light editing, color transfer and expression editing. We will make the code and trained models publicly available.

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