Wearable multimodal collection
- First-person video
- Spatial localization
- Eye movement and voice
- Hand motion and context
SceneAct AI
SceneAct AI reconstructs real human workflows from first-person multimodal capture into episode data for robot imitation, VLA training, task understanding, and evaluation.
Wearable AR glasses capture first-person video, spatial localization, eye movement, hand motion, voice, and context from natural daily tasks.
View OutputRobot-ready output
Reconstructed spatial interaction aligned with SOP steps, action primitives, outcomes, anomaly tags, and quality scores.
Multimodal models recover the task state that raw first-person video does not provide: structure, hand-eye trajectories, object states, grasp events, action phases, and optional full-body posture.
Product modules
SceneAct combines wearable capture, egocentric reconstruction, and robot-ready episode generation into one data engine.
Use cases
Early focus areas include medical eldercare, preclinical labs, smart laboratories, and high-standard industrial operations.