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ELIC: Efficient Learned Image Compression with Unevenly Grouped Space-Channel Contextual Adaptive Coding

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Recently, learned image compression techniques have achieved remarkable performance, even surpassing the best manually designed lossy image coders. They are promising to be large-scale adopted. For the sake of practicality, a thorough investigation of the architecture design of learned image compression, regarding both compression performance and running speed, is essential. In this paper, we first propose uneven channel-conditional adaptive coding, motivated by the observation of energy compaction in learned image compression. Combining the proposed uneven grouping model with existing context models, we obtain a spatial-channel contextual adaptive model to improve the coding performance without damage to running speed. Then we study the structure of the main transform and propose an efficient model, ELIC, to achieve state-of-the-art speed and compression ability. With superior performance, the proposed model also supports extremely fast preview decoding and progressive decoding, which makes the coming application of learning-based image compression more promising.

Dailan He, Ziming Yang, Weikun Peng, Rui Ma, Hongwei Qin, Yan Wang• 2022

Related benchmarks

TaskDatasetResultRank
Image CompressionKodak
BD-Rate (PSNR)-7.02
50
Image CompressionTecnick
BD-Rate (PSNR)-9.14
36
Image CompressionKodak (test)
BD-Rate-7.88
32
Image CompressionCLIC Professional (val)
BD-Rate (PSNR)-3.45
26
Image CompressionKodak
Encoding Time (s)0.056
20
Image CompressionCLIC
BD-Rate (PSNR)-1.19
16
Lossy compression performanceActiveCloth (test)
BD-Rate-57.1
10
Lossy CompressionTouchandGo
BD-Rate-40.2
10
Lossy CompressionSSVTP
BD-Rate-5.8
10
Lossy CompressionYCB-Slide
BD-Rate-9.2
10
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