A good image-to-image translation model should learn a mapping between different visual domains while satisfying the following properties: 1) diversity of generated images and 2) scalability over multiple domains. Existing methods address either of the issues, having limited diversity or multiple models for all domains. We propose StarGAN v2, a single framework that tackles both and shows significantly improved results over the baselines. Experiments on CelebA-HQ and a new animal faces dataset (AFHQ) validate our superiority in terms of visual quality, diversity, and scalability. To better assess image-to-image translation models, we release AFHQ, high-quality animal faces with large inter- and intra-domain differences. The code, pretrained models, and dataset can be found at https://github.com/clovaai/stargan-v2.
StarGAN v2: Diverse Image Synthesis for Multiple Domains
StarGAN v2 addresses both diversity and scalability in image-to-image translation with improved results across multiple domains, and introduces a new dataset of high-quality animal faces.
- Year
- 2019
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- stargan-v2-diverse-image-synthesis-for-1
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/1912.01865v2ARXIV-DEFAULT
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