Genie Envisioner: A Unified World Foundation Platform for Robotic Manipulation
By: Yue Liao , Pengfei Zhou , Siyuan Huang and more
Potential Business Impact:
Robots learn to do tasks by watching videos.
We introduce Genie Envisioner (GE), a unified world foundation platform for robotic manipulation that integrates policy learning, evaluation, and simulation within a single video-generative framework. At its core, GE-Base is a large-scale, instruction-conditioned video diffusion model that captures the spatial, temporal, and semantic dynamics of real-world robotic interactions in a structured latent space. Built upon this foundation, GE-Act maps latent representations to executable action trajectories through a lightweight, flow-matching decoder, enabling precise and generalizable policy inference across diverse embodiments with minimal supervision. To support scalable evaluation and training, GE-Sim serves as an action-conditioned neural simulator, producing high-fidelity rollouts for closed-loop policy development. The platform is further equipped with EWMBench, a standardized benchmark suite measuring visual fidelity, physical consistency, and instruction-action alignment. Together, these components establish Genie Envisioner as a scalable and practical foundation for instruction-driven, general-purpose embodied intelligence. All code, models, and benchmarks will be released publicly.
Similar Papers
Genie Sim 3.0 : A High-Fidelity Comprehensive Simulation Platform for Humanoid Robot
Robotics
Makes robots learn from computer-made worlds.
EnerVerse: Envisioning Embodied Future Space for Robotics Manipulation
Robotics
Robots learn to move and act in the real world.
EnerVerse: Envisioning Embodied Future Space for Robotics Manipulation
Robotics
Robots learn to do tasks by watching videos.