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arxiv 2411.02394 v1 pith:PCNSM6GE submitted 2024-11-04 cs.CV

AutoVFX: Physically Realistic Video Editing from Natural Language Instructions

classification cs.CV
keywords autovfxinstructionseditinglanguagenaturaleffectsphysicalrealistic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Modern visual effects (VFX) software has made it possible for skilled artists to create imagery of virtually anything. However, the creation process remains laborious, complex, and largely inaccessible to everyday users. In this work, we present AutoVFX, a framework that automatically creates realistic and dynamic VFX videos from a single video and natural language instructions. By carefully integrating neural scene modeling, LLM-based code generation, and physical simulation, AutoVFX is able to provide physically-grounded, photorealistic editing effects that can be controlled directly using natural language instructions. We conduct extensive experiments to validate AutoVFX's efficacy across a diverse spectrum of videos and instructions. Quantitative and qualitative results suggest that AutoVFX outperforms all competing methods by a large margin in generative quality, instruction alignment, editing versatility, and physical plausibility.

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Cited by 5 Pith papers

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  3. STaR-Quant: State-Time Consistent Post-Training Quantization for Diffusion Large Language Models

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    STaR-Quant provides a state-time consistent PTQ framework for DLLMs using SGAT and TAC to improve low-bit weight-activation quantization.

  4. AccidentSim: Generating Vehicle Collision Videos with Physically Realistic Collision Trajectories from Real-World Accident Reports

    cs.CV 2025-03 unverdicted novelty 6.0

    AccidentSim creates videos of car collisions with physically accurate trajectories by simulating data from accident reports, fine-tuning an LM on those trajectories, and rendering with NeRF.

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