Zada, Shiran
ReCapture: Generative Video Camera Controls for User-Provided Videos using Masked Video Fine-Tuning
Zhang, David Junhao, Paiss, Roni, Zada, Shiran, Karnad, Nikhil, Jacobs, David E., Pritch, Yael, Mosseri, Inbar, Shou, Mike Zheng, Wadhwa, Neal, Ruiz, Nataniel
Recently, breakthroughs in video modeling have allowed for controllable camera trajectories in generated videos. However, these methods cannot be directly applied to user-provided videos that are not generated by a video model. In this paper, we present ReCapture, a method for generating new videos with novel camera trajectories from a single user-provided video. Our method allows us to re-generate the reference video, with all its existing scene motion, from vastly different angles and with cinematic camera motion. Notably, using our method we can also plausibly hallucinate parts of the scene that were not observable in the reference video. Our method works by (1) generating a noisy anchor video with a new camera trajectory using multiview diffusion models or depth-based point cloud rendering and then (2) regenerating the anchor video into a clean and temporally consistent reangled video using our proposed masked video fine-tuning technique.
DreamBooth3D: Subject-Driven Text-to-3D Generation
Raj, Amit, Kaza, Srinivas, Poole, Ben, Niemeyer, Michael, Ruiz, Nataniel, Mildenhall, Ben, Zada, Shiran, Aberman, Kfir, Rubinstein, Michael, Barron, Jonathan, Li, Yuanzhen, Jampani, Varun
We present DreamBooth3D, an approach to personalize text-to-3D generative models from as few as 3-6 casually captured images of a subject. Our approach combines recent advances in personalizing text-to-image models (DreamBooth) with text-to-3D generation (DreamFusion). We find that naively combining these methods fails to yield satisfactory subject-specific 3D assets due to personalized text-to-image models overfitting to the input viewpoints of the subject. We overcome this through a 3-stage optimization strategy where we jointly leverage the 3D consistency of neural radiance fields together with the personalization capability of text-to-image models. Our method can produce high-quality, subject-specific 3D assets with text-driven modifications such as novel poses, colors and attributes that are not seen in any of the input images of the subject.