Video Generation with Learned Action Prior
Sarkar, Meenakshi, Bhardwaj, Devansh, Ghose, Debasish
–arXiv.org Artificial Intelligence
Stochastic video generation is particularly challenging when the camera is mounted on a moving platform, as camera motion interacts with observed image pixels, creating complex spatio-temporal dynamics and making the problem partially observable. Existing methods typically address this by focusing on raw pixel-level image reconstruction without explicitly modelling camera motion dynamics. We propose a solution by considering camera motion or action as part of the observed image state, modelling both image and action within a multi-modal learning framework. We introduce three models: Video Generation with Learning Action Prior (VG-LeAP) treats the image-action pair as an augmented state generated from a single latent stochastic process and uses variational inference to learn the image-action latent prior; Causal-LeAP, which establishes a causal relationship between action and the observed image frame at time $t$, learning an action prior conditioned on the observed image states; and RAFI, which integrates the augmented image-action state concept into flow matching with diffusion generative processes, demonstrating that this action-conditioned image generation concept can be extended to other diffusion-based models. We emphasize the importance of multi-modal training in partially observable video generation problems through detailed empirical studies on our new video action dataset, RoAM.
arXiv.org Artificial Intelligence
Jun-20-2024
- Country:
- North America > United States
- California > San Diego County > San Diego (0.04)
- Europe > Sweden
- Asia > India
- Karnataka > Bengaluru (0.04)
- Uttarakhand > Roorkee (0.04)
- North America > United States
- Genre:
- Research Report (0.40)
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- Media
- Television (0.74)
- Photography (0.74)
- Film (0.74)
- Media
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