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Hauptverfasser: Ding, Zihan, Jin, Chi, Liu, Difan, Zheng, Haitian, Singh, Krishna Kumar, Zhang, Qiang, Kang, Yan, Lin, Zhe, Liu, Yuchen
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2412.15689
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author Ding, Zihan
Jin, Chi
Liu, Difan
Zheng, Haitian
Singh, Krishna Kumar
Zhang, Qiang
Kang, Yan
Lin, Zhe
Liu, Yuchen
author_facet Ding, Zihan
Jin, Chi
Liu, Difan
Zheng, Haitian
Singh, Krishna Kumar
Zhang, Qiang
Kang, Yan
Lin, Zhe
Liu, Yuchen
contents Diffusion probabilistic models have shown significant progress in video generation; however, their computational efficiency is limited by the large number of sampling steps required. Reducing sampling steps often compromises video quality or generation diversity. In this work, we introduce a distillation method that combines variational score distillation and consistency distillation to achieve few-step video generation, maintaining both high quality and diversity. We also propose a latent reward model fine-tuning approach to further enhance video generation performance according to any specified reward metric. This approach reduces memory usage and does not require the reward to be differentiable. Our method demonstrates state-of-the-art performance in few-step generation for 10-second videos (128 frames at 12 FPS). The distilled student model achieves a score of 82.57 on VBench, surpassing the teacher model as well as baseline models Gen-3, T2V-Turbo, and Kling. One-step distillation accelerates the teacher model's diffusion sampling by up to 278.6 times, enabling near real-time generation. Human evaluations further validate the superior performance of our 4-step student models compared to teacher model using 50-step DDIM sampling.
format Preprint
id arxiv_https___arxiv_org_abs_2412_15689
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle DOLLAR: Few-Step Video Generation via Distillation and Latent Reward Optimization
Ding, Zihan
Jin, Chi
Liu, Difan
Zheng, Haitian
Singh, Krishna Kumar
Zhang, Qiang
Kang, Yan
Lin, Zhe
Liu, Yuchen
Computer Vision and Pattern Recognition
Diffusion probabilistic models have shown significant progress in video generation; however, their computational efficiency is limited by the large number of sampling steps required. Reducing sampling steps often compromises video quality or generation diversity. In this work, we introduce a distillation method that combines variational score distillation and consistency distillation to achieve few-step video generation, maintaining both high quality and diversity. We also propose a latent reward model fine-tuning approach to further enhance video generation performance according to any specified reward metric. This approach reduces memory usage and does not require the reward to be differentiable. Our method demonstrates state-of-the-art performance in few-step generation for 10-second videos (128 frames at 12 FPS). The distilled student model achieves a score of 82.57 on VBench, surpassing the teacher model as well as baseline models Gen-3, T2V-Turbo, and Kling. One-step distillation accelerates the teacher model's diffusion sampling by up to 278.6 times, enabling near real-time generation. Human evaluations further validate the superior performance of our 4-step student models compared to teacher model using 50-step DDIM sampling.
title DOLLAR: Few-Step Video Generation via Distillation and Latent Reward Optimization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.15689