Affiliation:
1. Chongqing University of Posts and Telecommunications and University of Chinese Academy of Sciences
2. University of Chinese Academy of Sciences, Beijing, China
3. Chongqing University of Posts and Telecommunications, Chongqing, China
Abstract
Humans remain far better than machines at learning, where humans require fewer examples to learn new concepts and can use those concepts in richer ways. Take handwriting as an example, after learning from very limited handwriting scripts, a person can easily imagine what the handwritten texts would like with other arbitrary textual contents (even for unseen words or texts). Moreover, humans can also hallucinate to imitate calligraphic styles from just a single reference handwriting sample (that even have never seen before). Humans can do such hallucinations, perhaps because they can learn to disentangle the textual contents and calligraphic styles from handwriting images. Inspired by this, we propose a novel handwriting imitation generative adversarial network (HiGAN+) for realistic handwritten text synthesis based on disentangled representations. The proposed HiGAN+ can achieve a precise one-shot handwriting style transfer by introducing the writer-specific auxiliary loss and contextual loss, and it also attains a good global & local consistency by refining local details of synthetic handwriting images. Extensive experiments, including human evaluations, on the benchmark dataset validate our superiority in terms of visual quality, scalability, compactness, and style transferability compared with the state-of-the-art GANs for handwritten text synthesis.
Funder
National Nature Science Foundation of China
NSFC Key Projects of International (Regional) Cooperation and Exchanges
Special Project on Technological Innovation and Application Development
Chongqing Excellent Scientist Project
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Graphics and Computer-Aided Design
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