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Main Authors: Li, Wuyang, Gao, Yang, Hassan, Mariam, Feng, Lan, Pan, Wentao, Luan, Po-Chien, Alahi, Alexandre
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.15042
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author Li, Wuyang
Gao, Yang
Hassan, Mariam
Feng, Lan
Pan, Wentao
Luan, Po-Chien
Alahi, Alexandre
author_facet Li, Wuyang
Gao, Yang
Hassan, Mariam
Feng, Lan
Pan, Wentao
Luan, Po-Chien
Alahi, Alexandre
contents We propose EverAnimate, an efficient post-training method for long-horizon animated video generation that preserves visual quality and character identity. Long-form animation remains challenging because highly dynamic human motion must be synthesized against relatively static environments, making chunk-based generation prone to accumulated drift: (i) low-level quality drift, such as progressive degradation of static backgrounds, and (ii) high-level semantic drift, such as inconsistent character identity and view-dependent attributes. To address this issue, EverAnimate restores drifted flow trajectories by anchoring generation to a persistent latent context memory, consisting of two complementary mechanisms. (i) Persistent Latent Propagation maintains a context memory across chunks to propagate identity and motion in latent space while mitigating temporal forgetting. (ii) Restorative Flow Matching introduces an implicit restoration objective during sampling through velocity adjustment, improving within-chunk fidelity. With only lightweight LoRA tuning, EverAnimate outperforms state-of-the-art long-animation methods in both short- and long-horizon settings: at 10 seconds, it improves PSNR/SSIM by 8%/7% and reduces LPIPS/FID by 22%/11%; at 90 seconds, the gains increase to 15%/15% and 32%/27%, respectively.
format Preprint
id arxiv_https___arxiv_org_abs_2605_15042
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle EverAnimate: Minute-Scale Human Animation via Latent Flow Restoration
Li, Wuyang
Gao, Yang
Hassan, Mariam
Feng, Lan
Pan, Wentao
Luan, Po-Chien
Alahi, Alexandre
Computer Vision and Pattern Recognition
Artificial Intelligence
We propose EverAnimate, an efficient post-training method for long-horizon animated video generation that preserves visual quality and character identity. Long-form animation remains challenging because highly dynamic human motion must be synthesized against relatively static environments, making chunk-based generation prone to accumulated drift: (i) low-level quality drift, such as progressive degradation of static backgrounds, and (ii) high-level semantic drift, such as inconsistent character identity and view-dependent attributes. To address this issue, EverAnimate restores drifted flow trajectories by anchoring generation to a persistent latent context memory, consisting of two complementary mechanisms. (i) Persistent Latent Propagation maintains a context memory across chunks to propagate identity and motion in latent space while mitigating temporal forgetting. (ii) Restorative Flow Matching introduces an implicit restoration objective during sampling through velocity adjustment, improving within-chunk fidelity. With only lightweight LoRA tuning, EverAnimate outperforms state-of-the-art long-animation methods in both short- and long-horizon settings: at 10 seconds, it improves PSNR/SSIM by 8%/7% and reduces LPIPS/FID by 22%/11%; at 90 seconds, the gains increase to 15%/15% and 32%/27%, respectively.
title EverAnimate: Minute-Scale Human Animation via Latent Flow Restoration
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2605.15042