{"id":1168969,"date":"2026-04-20T09:47:24","date_gmt":"2026-04-20T16:47:24","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/cod-lite-real-time-diffusion-based-generative-image-compression\/"},"modified":"2026-04-28T08:29:56","modified_gmt":"2026-04-28T15:29:56","slug":"cod-lite-real-time-diffusion-based-generative-image-compression","status":"publish","type":"msr-research-item","link":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/cod-lite-real-time-diffusion-based-generative-image-compression\/","title":{"rendered":"CoD-Lite: Real-Time Diffusion-Based Generative Image Compression"},"content":{"rendered":"
Recent advanced diffusion methods typically derive strong generative priors by scaling diffusion transformers. However, scaling fails to generalize when adapted for real-time compression scenarios that demand lightweight models. In this paper, we explore the design of real-time and lightweight diffusion codecs by addressing two pivotal questions. First, does diffusion pre-training benefit lightweight diffusion codecs? Through systematic analysis, we find that generation-oriented pre-training is less effective at small model scales whereas compression-oriented pre-training yields consistently better performance. Second, are transformers essential? We find that while global attention is crucial for standard generation, lightweight convolutions suffice for compression-oriented diffusion when paired with distillation. Guided by these findings, we establish a one-step lightweight convolution diffusion codec that achieves real-time $60$~FPS encoding and $42$~FPS decoding at 1080p. Further enhanced by distillation and adversarial learning, the proposed codec reduces bitrate by 85% at a comparable FID to MS-ILLM, bridging the gap between generative compression and practical real-time deployment. Codes are released at https:\/\/github.com\/microsoft\/GenCodec\/tree\/main\/CoD_Lite<\/p>\n","protected":false},"excerpt":{"rendered":"
Recent advanced diffusion methods typically derive strong generative priors by scaling diffusion transformers. However, scaling fails to generalize when adapted for real-time compression scenarios that demand lightweight models. In this paper, we explore the design of real-time and lightweight diffusion codecs by addressing two pivotal questions. First, does diffusion pre-training benefit lightweight diffusion codecs? Through 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