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Papers/Alias-Free Generative Adversarial Networks

Alias-Free Generative Adversarial Networks

Tero Karras, Miika Aittala, Samuli Laine, Erik Härkönen, Janne Hellsten, Jaakko Lehtinen, Timo Aila

2021-06-23NeurIPS 2021 12Image Generation
PaperPDFCodeCode(official)CodeCodeCodeCodeCode

Abstract

We observe that despite their hierarchical convolutional nature, the synthesis process of typical generative adversarial networks depends on absolute pixel coordinates in an unhealthy manner. This manifests itself as, e.g., detail appearing to be glued to image coordinates instead of the surfaces of depicted objects. We trace the root cause to careless signal processing that causes aliasing in the generator network. Interpreting all signals in the network as continuous, we derive generally applicable, small architectural changes that guarantee that unwanted information cannot leak into the hierarchical synthesis process. The resulting networks match the FID of StyleGAN2 but differ dramatically in their internal representations, and they are fully equivariant to translation and rotation even at subpixel scales. Our results pave the way for generative models better suited for video and animation.

Results

TaskDatasetMetricValueModel
Image GenerationAFHQV2EQ-R13.51Alias-Free-T
Image GenerationAFHQV2EQ-T60.15Alias-Free-T
Image GenerationAFHQV2FID4.04Alias-Free-T
Image GenerationAFHQV2EQ-R40.34Alias-Free-R
Image GenerationAFHQV2EQ-T64.89Alias-Free-R
Image GenerationAFHQV2FID4.4Alias-Free-R
Image GenerationAFHQV2EQ-R11.5StyleGAN2
Image GenerationAFHQV2EQ-T13.83StyleGAN2
Image GenerationAFHQV2FID4.62StyleGAN2
Image GenerationFFHQ-UEQ-R47.64Alias-Free-R
Image GenerationFFHQ-UEQ-T64.78Alias-Free-R
Image GenerationFFHQ-UFID3.66Alias-Free-R
Image GenerationFFHQ-UEQ-R13.95Alias-Free-T
Image GenerationFFHQ-UEQ-T61.69Alias-Free-T
Image GenerationFFHQ-UFID3.67Alias-Free-T
Image GenerationFFHQ-UEQ-R10.79StyleGAN2 (70000 img, 1024^2, train from scratch)
Image GenerationFFHQ-UEQ-T15.89StyleGAN2 (70000 img, 1024^2, train from scratch)
Image GenerationFFHQ-UFID3.79StyleGAN2 (70000 img, 1024^2, train from scratch)
Image GenerationFFHQ-UEQ-R40.48StyleGAN2 + Rotation equiv. (Alias-Free-R)
Image GenerationFFHQ-UEQ-T66.65StyleGAN2 + Rotation equiv. (Alias-Free-R)
Image GenerationFFHQ-UFID4.5StyleGAN2 + Rotation equiv. (Alias-Free-R)
Image GenerationFFHQ-UEQ-R10.84StyleGAN2 + No noise inputs
Image GenerationFFHQ-UEQ-T15.81StyleGAN2 + No noise inputs
Image GenerationFFHQ-UFID4.54StyleGAN2 + No noise inputs
Image GenerationFFHQ-UEQ-R13.12StyleGAN2 + Flexible layers (Alias-Free-T)
Image GenerationFFHQ-UEQ-T63.01StyleGAN2 + Flexible layers (Alias-Free-T)
Image GenerationFFHQ-UFID4.62StyleGAN2 + Flexible layers (Alias-Free-T)
Image GenerationFFHQ-UEQ-R10.61StyleGAN2 + Transformed Fourier features
Image GenerationFFHQ-UEQ-T45.2StyleGAN2 + Transformed Fourier features
Image GenerationFFHQ-UFID4.64StyleGAN2 + Transformed Fourier features
Image GenerationFFHQ-UEQ-R10.84StyleGAN2 + Non-critical sampling
Image GenerationFFHQ-UEQ-T43.9StyleGAN2 + Non-critical sampling
Image GenerationFFHQ-UFID4.78StyleGAN2 + Non-critical sampling
Image GenerationFFHQ-UEQ-R10.81StyleGAN2 + Fourier features
Image GenerationFFHQ-UEQ-T16.23StyleGAN2 + Fourier features
Image GenerationFFHQ-UFID4.79StyleGAN2 + Fourier features
Image GenerationFFHQ-UFID5.14StyleGAN2
Image GenerationFFHQ-UEQ-R10.41StyleGAN2 + Simplified generator
Image GenerationFFHQ-UEQ-T19.47StyleGAN2 + Simplified generator
Image GenerationFFHQ-UFID5.21StyleGAN2 + Simplified generator
Image GenerationFFHQ-UEQ-R10.97StyleGAN2 + Boundaries & upsampling
Image GenerationFFHQ-UEQ-T24.62StyleGAN2 + Boundaries & upsampling
Image GenerationFFHQ-UFID6.02StyleGAN2 + Boundaries & upsampling
Image GenerationFFHQ-UEQ-R10.81StyleGAN2 + Filtered nonlinearities
Image GenerationFFHQ-UEQ-T30.6StyleGAN2 + Filtered nonlinearities
Image GenerationFFHQ-UFID6.35StyleGAN2 + Filtered nonlinearities
Image GenerationFFHQ 1024 x 1024FID2.79StyleGAN3-T
Image GenerationFFHQ 1024 x 1024FID3.07StyleGAN3-R
Image GenerationMetFaces-UEQ-R48.57Alias-Free-R
Image GenerationMetFaces-UEQ-T66.34Alias-Free-R
Image GenerationMetFaces-UFID18.75Alias-Free-R
Image GenerationMetFaces-UEQ-R16.63Alias-Free-T
Image GenerationMetFaces-UEQ-T64.11Alias-Free-T
Image GenerationMetFaces-UFID18.75Alias-Free-T
Image GenerationMetFaces-UEQ-R13.19StyleGAN2
Image GenerationMetFaces-UEQ-T18.77StyleGAN2
Image GenerationMetFaces-UFID18.98StyleGAN2

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