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arxiv: 2412.06578 · v1 · pith:WIUNA5U2 · submitted 2024-12-09 · cs.CV

MoViE: Mobile Diffusion for Video Editing

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classification cs.CV
keywords editingmobilevideodevicesdistillationoptimizationsadversarialapplications
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Recent progress in diffusion-based video editing has shown remarkable potential for practical applications. However, these methods remain prohibitively expensive and challenging to deploy on mobile devices. In this study, we introduce a series of optimizations that render mobile video editing feasible. Building upon the existing image editing model, we first optimize its architecture and incorporate a lightweight autoencoder. Subsequently, we extend classifier-free guidance distillation to multiple modalities, resulting in a threefold on-device speedup. Finally, we reduce the number of sampling steps to one by introducing a novel adversarial distillation scheme which preserves the controllability of the editing process. Collectively, these optimizations enable video editing at 12 frames per second on mobile devices, while maintaining high quality. Our results are available at https://qualcomm-ai-research.github.io/mobile-video-editing/

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  1. MobileWan: Closing the Quality Gap for Mobile Video Diffusion

    cs.CV 2026-07 conditional novelty 6.0

    A 5B-parameter video diffusion transformer is made deployable on mobile hardware via recurrence distillation, learnable head pruning, step distillation, and decoder optimization, achieving 83.79 VBench at 20s latency.