Kinetix Unveils Kamo-1: A 3D-Conditioned AI Video Generation Model with Physical Grounding
Kinetix introduces Kamo-1, a 3D-conditioned video generation model that brings physical grounding and precise control to AI video generation. The model supports multimodal conditioning including 3D camera trajectories, 3D character animations reconstructed from RGB acting videos, reference images, and natural language prompts. It enables coordinated control over both camera motion and character motion within the same generated shot, representing a research advancement in 3D and human motion intelligence.
Key quotes
Kamo-1 is our 3D conditioned video generation model, designed to bring physical grounding and precise control into AI video.
It supports multimodal conditioning, including 3D camera trajectories, 3D character animations reconstructed from RGB acting videos, reference images, and natural language prompts.
By jointly conditioning on both camera trajectories and 3D animations, Kamo-1 enables coordinated control over camera motion and character motion within the same generated shot.
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