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DAM-VSR: Disentanglement of Appearance and Motion for Video Super-Resolution

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arxiv 2507.01012 v1 pith:622AAK4V submitted 2025-07-01 cs.CV

DAM-VSR: Disentanglement of Appearance and Motion for Video Super-Resolution

classification cs.CV
keywords videoappearancedam-vsrmotionsuper-resolutioncapabilitiesdetaildiffusion
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Real-world video super-resolution (VSR) presents significant challenges due to complex and unpredictable degradations. Although some recent methods utilize image diffusion models for VSR and have shown improved detail generation capabilities, they still struggle to produce temporally consistent frames. We attempt to use Stable Video Diffusion (SVD) combined with ControlNet to address this issue. However, due to the intrinsic image-animation characteristics of SVD, it is challenging to generate fine details using only low-quality videos. To tackle this problem, we propose DAM-VSR, an appearance and motion disentanglement framework for VSR. This framework disentangles VSR into appearance enhancement and motion control problems. Specifically, appearance enhancement is achieved through reference image super-resolution, while motion control is achieved through video ControlNet. This disentanglement fully leverages the generative prior of video diffusion models and the detail generation capabilities of image super-resolution models. Furthermore, equipped with the proposed motion-aligned bidirectional sampling strategy, DAM-VSR can conduct VSR on longer input videos. DAM-VSR achieves state-of-the-art performance on real-world data and AIGC data, demonstrating its powerful detail generation capabilities.

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