
arXiv: 2204.02273
Positional encodings have enabled recent works to train a single adversarial network that can generate images of different scales. However, these approaches are either limited to a set of discrete scales or struggle to maintain good perceptual quality at the scales for which the model is not trained explicitly. We propose the design of scale-consistent positional encodings invariant to our generator's layers transformations. This enables the generation of arbitrary-scale images even at scales unseen during training. Moreover, we incorporate novel inter-scale augmentations into our pipeline and partial generation training to facilitate the synthesis of consistent images at arbitrary scales. Lastly, we show competitive results for a continuum of scales on various commonly used datasets for image synthesis.
CVPR2022, code: https://github.com/vglsd/ScaleParty
FOS: Computer and information sciences, Technology, Science & Technology, Computer Vision and Pattern Recognition (cs.CV), Computer Science, Computer Science - Computer Vision and Pattern Recognition, Imaging Science & Photographic Technology, Computer Science, Artificial Intelligence
FOS: Computer and information sciences, Technology, Science & Technology, Computer Vision and Pattern Recognition (cs.CV), Computer Science, Computer Science - Computer Vision and Pattern Recognition, Imaging Science & Photographic Technology, Computer Science, Artificial Intelligence
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