Super-Resolving Face Image by Facial Parsing Information
- URL: http://arxiv.org/abs/2304.02923v1
- Date: Thu, 6 Apr 2023 08:19:03 GMT
- Title: Super-Resolving Face Image by Facial Parsing Information
- Authors: Chenyang Wang, Junjun Jiang, Zhiwei Zhong, Deming Zhai, and Xianming
Liu
- Abstract summary: Face super-resolution is a technology that transforms a low-resolution face image into the corresponding high-resolution one.
We build a novel parsing map guided face super-resolution network which extracts the face prior from low-resolution face image.
High-resolution features contain more precise spatial information while low-resolution features provide strong contextual information.
- Score: 52.1267613768555
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Face super-resolution is a technology that transforms a low-resolution face
image into the corresponding high-resolution one. In this paper, we build a
novel parsing map guided face super-resolution network which extracts the face
prior (i.e., parsing map) directly from low-resolution face image for the
following utilization. To exploit the extracted prior fully, a parsing map
attention fusion block is carefully designed, which can not only effectively
explore the information of parsing map, but also combines powerful attention
mechanism. Moreover, in light of that high-resolution features contain more
precise spatial information while low-resolution features provide strong
contextual information, we hope to maintain and utilize these complementary
information. To achieve this goal, we develop a multi-scale refine block to
maintain spatial and contextual information and take advantage of multi-scale
features to refine the feature representations. Experimental results
demonstrate that our method outperforms the state-of-the-arts in terms of
quantitative metrics and visual quality. The source codes will be available at
https://github.com/wcy-cs/FishFSRNet.
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