Few-step Generative Models as Lossy Compression 事件

PRODUCT_LAUNCH2026-06-10影响: MEDIUM

Few-step Generative Models as Lossy Compression arXiv:2606.10450v1 Announce Type: new Abstract: DiffC provides a principled way to reuse pre-trained diffusion models for lossy compression, but its encoding and decoding procedures remain slow because they require many discretized forward and reverse steps. We study whether few-step generative models -- Rectified Flow, Consistency Trajectory Models (CTM), and MeanFlow -- can be cast as codecs within the same reverse channel coding (RCC) framework