BulletGen enhances 4D dynamic scene reconstruction from monocular videos by supervising Gaussian optimization with diffusion-generated frames aligned at a bullet-time step, achieving SOTA on novel-view synthesis and tracking.
Tensor4d: Efficient neural 4d decomposition for high-fidelity dynamic reconstruction and rendering
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ODE-GS uses latent neural ODEs on Gaussian parameters to extrapolate dynamic 3D scenes, reporting 19.8% metric gains over baselines on D-NeRF, NVFi, and HyperNeRF.
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BulletGen: Improving 4D Reconstruction with Bullet-Time Generation
BulletGen enhances 4D dynamic scene reconstruction from monocular videos by supervising Gaussian optimization with diffusion-generated frames aligned at a bullet-time step, achieving SOTA on novel-view synthesis and tracking.
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ODE-GS: Latent ODEs for Dynamic Scene Extrapolation with 3D Gaussian Splatting
ODE-GS uses latent neural ODEs on Gaussian parameters to extrapolate dynamic 3D scenes, reporting 19.8% metric gains over baselines on D-NeRF, NVFi, and HyperNeRF.