language:
- en
- zh
tags:
- robotics
- manipulation
- multimodal
- trajectory-data
- vision-sensors
license: other
task_categories:
- robotics
multimodal: vision+action
dataset_info:
features:
- name: rgb_images
dtype: image
description: Multi-view RGB images
- name: slam_poses
sequence: float32
description: SLAM pose trajectories
- name: vive_poses
sequence: float32
description: Vive tracking system poses
- name: point_clouds
sequence: float32
description: Time-of-Flight point cloud data
- name: clamp_data
sequence: float32
description: Clamp sensor readings
- name: merged_trajectory
sequence: float32
description: Fused trajectory data
configs:
- config_name: default
data_files: '**/*'
FastUMI Pro™ Robotics Dataset
Enterprise-Grade Data Engine for Embodied AI
📖 Overview
The FastUMI Pro Sample Dataset contains a small number of demonstration trajectories
(only dozens of episodes, not a large-scale dataset).
It showcases the multimodal sensing capabilities of the FastUMI Pro system, including:
- RGB camera streams
- Visual SLAM pose trajectories
- Vive tracking data
- Time-of-Flight (ToF) point clouds
- Clamp (gripper gap) measurements
- Fused pose trajectories
This dataset is intended as a public preview of the data modality, structure, and quality of FastUMI Pro.
For full-scale datasets or customized collection services, please contact the FastUMI team directly.
✨ Key Features
- High-precision spatial tracking
- Multi-sensor synchronization across RGB, SLAM, Vive, ToF, and clamp channels
- Standardized directory and timestamp structure
- Ready for embodied AI, imitation learning, and robotics research
- Hardware-agnostic data format for cross-platform manipulation applications
📥 Data Download
Example Dataset
# Direct download (may be slow in some regions)
huggingface-cli download FastUMIPro/example_data_fastumi_pro_raw --repo-type dataset --local-dir ~/fastumi_data/
Mirror Download (Recommended)
# Set mirror endpoint
export HF_ENDPOINT=https://hf-mirror.com
Download via mirror
huggingface-cli download --repo-type dataset --resume-download FastUMIPro/example_data_fastumi_pro_raw --local-dir ~/fastumi_data/ 📁 Data Structure Each session represents an independent operation "episode" containing observation data and action sequences.
Directory Structure
text
session_001/
└── device_label_xv_serial/
└── session_timestamp/
├── RGB_Images/
│ ├── timestamps.csv
│ └── Frames/
│ ├── frame_000001.jpg
│ └── ...
├── SLAM_Poses/
│ └── slam_raw.txt
├── Vive_Poses/
│ └── vive_data_tum.txt
├── ToF_PointClouds/
│ ├── timestamps.csv
│ └── PointClouds/
│ └── pointcloud_000001.pcd
├── Clamp_Data/
│ └── clamp_data_tum.txt
└── Merged_Trajectory/
├── merged_trajectory.txt
└── merge_stats.txt
Data Specifications
| Data Type | Path | Shape | Type | Description |
|---|---|---|---|---|
| RGB Images | session_XXX/RGB_Images/Video.MP4 |
(frames, 1080, 1920, 3) |
uint8 |
Camera video data, 60 FPS |
| SLAM Poses | session_XXX/SLAM_Poses/slam_raw.txt |
(timestamps, 7) |
float |
UMI end-effector poses |
| Vive Poses | session_XXX/Vive_Poses/vive_data_tum.txt |
(timestamps, 7) |
float |
Vive base station poses |
| ToF PointClouds | session_XXX/PointClouds/pointcloud_...pcd |
pcd format |
pcd | Time-of-Flight point cloud data |
| Clamp Data | session_XXX/Clamp_Data/clamp_data_tum.txt |
(timestamps, 1) |
float |
Gripper spacing (mm) |
| Merged Trajectory | session_XXX/Merged_Trajectory/merged_trajectory.txt |
(timestamps, 7) |
float |
Fused trajectory (Vive/UMI based on velocity) |
Pose Data Format
All pose data (SLAM, Vive, Merged) follow the same format:
| Data | Description |
|---|---|
| Timestamp | Unix timestamp of the trajectory data |
| Pos X | X-coordinate of position (meters) |
| Pos Y | Y-coordinate of position (meters) |
| Pos Z | Z-coordinate of position (meters) |
| Q_X | X-component of orientation quaternion |
| Q_Y | Y-component of orientation quaternion |
| Q_Z | Z-component of orientation quaternion |
| Q_W | W-component of orientation quaternion |
🔄 Data Conversion
[TBD]
🤝 Collaboration
FastUMI Pro dataset is available for research collaboration. The full FastUMI-150K dataset has been provided to partner research teams for large-scale model training.
📞 Contact
☎️ 开发团队联系方式
对于任何问题或建议,请随时联系我们的开发团队。
负责人 (Lead) Ding Yan dingyan@lumosbot.tech Duke_dingyan