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High-Fidelity Generative Image Compression

About

We extensively study how to combine Generative Adversarial Networks and learned compression to obtain a state-of-the-art generative lossy compression system. In particular, we investigate normalization layers, generator and discriminator architectures, training strategies, as well as perceptual losses. In contrast to previous work, i) we obtain visually pleasing reconstructions that are perceptually similar to the input, ii) we operate in a broad range of bitrates, and iii) our approach can be applied to high-resolution images. We bridge the gap between rate-distortion-perception theory and practice by evaluating our approach both quantitatively with various perceptual metrics, and with a user study. The study shows that our method is preferred to previous approaches even if they use more than 2x the bitrate.

Fabian Mentzer, George Toderici, Michael Tschannen, Eirikur Agustsson• 2020

Related benchmarks

TaskDatasetResultRank
Image CompressionDIV2K 512
BD-PSNR-2.71
90
Image CompressionKodak24 512
PSNR27.38
76
Image CompressionCLIC2020 512x512 (test)
BD-PSNR33.29
66
Image CompressionTecnick--
44
Image CompressionKodak (test)--
32
Image CompressionKodak
Encoding Time (s)0.038
20
Image CompressionKodak24 512x512 (test)
BD-PSNR1.67
13
Image CompressionTecnick (test)
BD-rate (LPIPS)68.66
10
Image CompressionKodak
BD-DISTS90.08
10
Image CompressionCLIC Professional 2020
BD-rate (LPIPS)86.45
9
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