APRNet: Attention-based Pixel-wise Rendering Network for Photo-Realistic
Text Image Generation
- URL: http://arxiv.org/abs/2203.07705v1
- Date: Tue, 15 Mar 2022 07:48:34 GMT
- Title: APRNet: Attention-based Pixel-wise Rendering Network for Photo-Realistic
Text Image Generation
- Authors: Yangming Shi, Haisong Ding, Kai Chen, Qiang Huo
- Abstract summary: Style-guided text image generation tries to synthesize text image by imitating reference image's appearance.
In this paper, we focus on transferring style image's background and foreground color patterns to the content image to generate photo-realistic text image.
- Score: 11.186226578337125
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Style-guided text image generation tries to synthesize text image by
imitating reference image's appearance while keeping text content unaltered.
The text image appearance includes many aspects. In this paper, we focus on
transferring style image's background and foreground color patterns to the
content image to generate photo-realistic text image. To achieve this goal, we
propose 1) a content-style cross attention based pixel sampling approach to
roughly mimicking the style text image's background; 2) a pixel-wise style
modulation technique to transfer varying color patterns of the style image to
the content image spatial-adaptively; 3) a cross attention based multi-scale
style fusion approach to solving text foreground misalignment issue between
style and content images; 4) an image patch shuffling strategy to create style,
content and ground truth image tuples for training. Experimental results on
Chinese handwriting text image synthesis with SCUT-HCCDoc and CASIA-OLHWDB
datasets demonstrate that the proposed method can improve the quality of
synthetic text images and make them more photo-realistic.
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