TL;DR
Stream-R1 introduces a reward-aware distillation method for streaming video generation that adaptively emphasizes reliable and high-uncertainty regions, improving quality without extra inference costs.
Contribution
It proposes a novel adaptive reweighting framework that considers both inter-rollout reliability and intra-frame perplexity for enhanced video diffusion distillation.
Findings
Achieves consistent quality improvements over baselines on standard benchmarks.
Effectively balances visual, motion, and text alignment quality axes.
Does not require architectural changes or additional inference costs.
Abstract
Distillation-based acceleration has become foundational for making autoregressive streaming video diffusion models practical, with distribution matching distillation (DMD) as the de facto choice. Existing methods, however, train the student to match the teacher's output indiscriminately, treating every rollout, frame, and pixel as equally reliable supervision. We argue that this caps distilled quality, since it overlooks two complementary axes of variance in DMD supervision: Inter-Reliability across student rollouts whose supervision varies in reliability, and Intra-Perplexity across spatial regions and temporal frames that contribute unequally to where quality can still be improved. The objective thus conflates two questions under a uniform weight: whether to learn from each rollout, and where to concentrate optimization within it. To address this, we propose Stream-R1, a…
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