Egocentric Video Capture
Record first-person view video in RGB format from the operator's perspective to generate visual context required for robotics, embodied AI, and VLA models.
Collect egocentric, training-ready data directly from real-world settings. Rebocam unifies video, depth, audio, and IMU streams into structured datasets built for robotics, embodied AI, and Vision-Language-Action (VLA) model development.

Purpose-built for Physical AI data collection. Deploy across homes, manufacturing units, health care facilities, warehouses, and other operational environments to capture first-person, multimodal datasets at scale.
First-person video designed to match robot deployment viewpoints.
Synchronized video, depth, audio, and IMU data across all recording sessions.
Collect data globally through Robgence's distributed operator infrastructure.
Structured outputs compatible with OpenVLA, pi0, and custom robotics pipelines.
Record first-person view video in RGB format from the operator's perspective to generate visual context required for robotics, embodied AI, and VLA models.
Synchronize RGB, depth, audio, IMU, tactile, and force-torque data into a single, consistent multimodal sensor stream.
Structure sessions with aligned modalities, timestamps and metadata for downstream labeling (actions, object interactions, contacts, and behavior).
Monitor capture quality during collection to detect missing modalities, timestamp drift, synchronization issues, and incomplete sessions before deployment.
Upload and organize datasets directly into centralized cloud storage pipelines, reducing operational overhead and accelerating access for research teams.
Export structured datasets ready for embodied AI, imitation learning, and OpenVLA and pi0 training pipelines.
REBOCAM eliminates the operational complexity of multimodal data collection. From deployment and sensor synchronization to validation, every step is designed to produce training-ready robotics data with minimal setup.
Attach REBOCAM to an operator, workstation, robotic cell, or test environment using pre-configured hardware, sensor calibration, and fast-mount accessories to enable rapid deployment without custom integration.
Capture RGB, depth, audio, IMU, and optional force-torque streams via a unified data pipeline. Real-time validation monitors modality, timestamp alignment, motion blur, lighting, and recording integrity during collection.
Automatically package, validate, and export synchronised outputs compatible with OpenVLA, pi0, LeRobot, RLDS, and MCAP pipelines for robotics research workflows, imitation learning pipelines, and VLA models.

Capture manipulation trajectories, tool use, grasp strategies, and station-to-station workflows across manufacturing, logistics, and industrial environments.

Generate egocentric demonstrations paired with rich task context and natural-language descriptions for Vision-Language-Action model training and instruction-following policies.

Capture human-object interactions, proximity behavior, articulated object manipulation, and real-world task execution in homes, office, and service settings.

Standardize multimodal data collection across operators and environments to build diverse datasets for world models, imitation learning, and Physical AI.
Building a multimodal robotics capture stack takes months of hardware integration, synchronization, QA, and data infrastructure work. REBOCAM delivers a production-ready data pipeline that gets robotics teams from training-ready datasets to deployment in days.
| Rebocam | Build your own | Consumer rig | |
|---|---|---|---|
| Time to First Dataset | < 1 Day | 3 – 6 Months | 2 – 4 Weeks |
| Synchronized Multimodal Capture | |||
| Real-Time Capture Validation | |||
| Privacy & Compliance Controls | |||
| Automated Dataset Delivery | |||
| Training-Ready Output Formats | |||
| Scalable Multi-Operator Deployment |
Everything you need to know about deploying Rebocam for multimodal robotics data collection. Have a specific requirement? Our team can help design a collection workflow tailored to your research or deployment goals.
Talk to an EngineerRebocam is designed for multimodal robotics data collection, which includes egocentric video, depth, audio, motion, force, tactile, and interaction data. The system collects synchronized data, which may be used for embodied AI, imitation learning, teleoperation, manipulation learning, and VLA modeling.
Rebocam is built for rapid deployment. Most teams can move from setup to their first training-ready dataset in less than a day, without building custom synchronization pipelines or collection infrastructure.
Rebocam is designed for real-world deployment across manufacturing, logistics, domestic homes, hospitality, office settings, and other operational spaces, where robotics systems are deployed.
Captured sessions are validated, processed, and delivered as structured datasets that integrate with existing robotics research and machine learning workflows. Dataset delivery can be configured to match your team's storage and training infrastructure requirements.
Robgence follows structured data collection, consent, and quality assurance workflows designed for enterprise and research environments. Privacy controls, data governance, and dataset handling procedures are incorporated throughout the collection pipeline.
Yes. Rebocam is designed to operate as part of Robgence's broader data infrastructure, enabling coordinated collection across multiple operators, environments, and locations. This allows teams to scale from pilot studies to large-scale robotics dataset generation without redesigning their workflow.
See how Rebocam fits into your data collection workflow. Our team will help you evaluate capture requirements, deployment environments, and dataset specifications, so you can move from collection to training-ready data faster.