ARCHE: Autoregressive Residual Compression with Hyperprior and Excitation
arXiv cs.CV / 3/12/2026
💬 OpinionModels & Research
Key Points
- ARCHE is an end-to-end learned image compression framework that balances modeling accuracy and computational efficiency by unifying hierarchical, spatial, and channel priors within a single probabilistic model.
- It achieves state-of-the-art rate-distortion performance, reducing BD-Rate by approximately 48% versus Balle et al., 30% versus the channel-wise autoregressive model of Minnen & Singh, and 5% against the VVC Intra codec on the Kodak benchmark.
- The approach avoids recurrent or transformer components and uses adaptive feature recalibration and residual refinement, with 95M parameters and about 222 ms per image, supporting practical deployment.
- Visual comparisons indicate sharper textures and improved color fidelity at low bitrates, illustrating effective entropy modeling through efficient convolutional design.
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