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Optimizing Few-Step Generation with Adaptive Matching Distillation

About

Distribution Matching Distillation (DMD) is a powerful acceleration paradigm, yet its stability is often compromised in Forbidden Zone, regions where the real teacher provides unreliable guidance while the fake teacher exerts insufficient repulsive force. In this work, we propose a unified optimization framework that reinterprets prior art as implicit strategies to avoid these corrupted regions. Based on this insight, we introduce Adaptive Matching Distillation (AMD), a self-correcting mechanism that utilizes reward proxies to explicitly detect and escape Forbidden Zones. AMD dynamically prioritizes corrective gradients via structural signal decomposition and introduces Repulsive Landscape Sharpening to enforce steep energy barriers against failure mode collapse. Extensive experiments across image and video generation tasks (e.g., SDXL, Wan2.1) and rigorous benchmarks (e.g., VBench, GenEval) demonstrate that AMD significantly enhances sample fidelity and training robustness. For instance, AMD improves the HPSv2 score on SDXL from 30.64 to 31.25, outperforming state-of-the-art baselines. These findings validate that explicitly rectifying optimization trajectories within Forbidden Zones is essential for pushing the performance ceiling of few-step generative models.

Lichen Bai, Zikai Zhou, Shitong Shao, Wenliang Zhong, Shuo Yang, Shuo Chen, Bojun Chen, Zeke Xie• 2026

Related benchmarks

TaskDatasetResultRank
Text-to-Image GenerationGenEval
Overall Score57
467
Video GenerationVBench
Quality Score37.39
102
Video GenerationVBench (test)
Semantic Score69.91
35
Text-to-Image GenerationCOCO 2014 (val)--
25
Class-to-image generationImageNet 50k (val)
FID3.469
3
Video GenerationTA Hard
VQ-0.1412
2
Video GenerationVideoGen-Eval
VQ (Visual Quality)-21.93
2
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