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Focal Frequency Loss for Image Reconstruction and Synthesis

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arxiv 2012.12821 v3 pith:DMCVCQBX submitted 2020-12-23 cs.CV cs.LGeess.IV

Focal Frequency Loss for Image Reconstruction and Synthesis

classification cs.CV cs.LGeess.IV
keywords frequencylossfocalimagereconstructionsynthesisdomainfurther
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Image reconstruction and synthesis have witnessed remarkable progress thanks to the development of generative models. Nonetheless, gaps could still exist between the real and generated images, especially in the frequency domain. In this study, we show that narrowing gaps in the frequency domain can ameliorate image reconstruction and synthesis quality further. We propose a novel focal frequency loss, which allows a model to adaptively focus on frequency components that are hard to synthesize by down-weighting the easy ones. This objective function is complementary to existing spatial losses, offering great impedance against the loss of important frequency information due to the inherent bias of neural networks. We demonstrate the versatility and effectiveness of focal frequency loss to improve popular models, such as VAE, pix2pix, and SPADE, in both perceptual quality and quantitative performance. We further show its potential on StyleGAN2.

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