Litcius/Paper detail

Lossy Image Compression with Foundation Diffusion Models

Lucas Relic, Roberto Gerson de Albuquerque Azevedo, Markus Groß, Christopher Schroers

2024Lecture notes in computer science12 citationsDOIOpen Access PDF

Abstract

Abstract Incorporating diffusion models in the image compression domain has the potential to produce realistic and detailed reconstructions, especially at extremely low bitrates. Previous methods focus on using diffusion models as expressive decoders robust to quantization errors in the conditioning signals. However, achieving competitive results in this manner requires costly training of the diffusion model and long inference times due to the iterative generative process. In this work we formulate the removal of quantization error as a denoising task, using diffusion to recover lost information in the transmitted image latent. Our approach allows us to perform less than 10% of the full diffusion generative process and requires no architectural changes to the diffusion model, enabling the use of foundation models as a strong prior without additional fine tuning of the backbone. Our proposed codec outperforms previous methods in quantitative realism metrics, and we verify that our reconstructions are qualitatively preferred by end users, even when other methods use twice the bitrate.

Topics & Concepts

Lossy compressionComputer scienceFoundation (evidence)DiffusionCompression (physics)Data compressionComputer graphics (images)Image compressionImage (mathematics)Computer visionArtificial intelligenceImage processingComposite materialMaterials scienceThermodynamicsArchaeologyHistoryPhysicsAdvanced Data Compression TechniquesImage and Signal Denoising MethodsMathematical Dynamics and Fractals
Lossy Image Compression with Foundation Diffusion Models | Litcius