Mobile-GVIO: A Multi-Sensor GNSS-Visual-Inertial Dataset for Complex Urban Environments
Description
Mobile-GVIO dataset is a fine-grained multi-sensor dataset for GNSS-Visual-Inertial fusion evaluation in complex urban environments. It provides synchronized monocular camera images, high-frequency IMU measurements, consumer-grade GNSS observations, and ground truth trajectories for seven real-world sequences across three environment types: indoor-outdoor hybrid, pure outdoor, and pure indoor.
Data were collected using an Honor smartphone (visual-inertial, 1280x720 camera @30 Hz + 100 Hz IMU), an iPhone 11 Pro Max (WGS-84 GNSS @1 Hz), and a handheld LiDAR-IMU mapping system (ground truth via Fast-LIO2). The Honor and LiDAR-IMU are rigidly mounted on a stable frame, while the iPhone is carried alongside by the operator.
Seven sequences:
- IO-1: Indoor-outdoor hybrid, ~1005 m, 836 s
- IO-2: Indoor-outdoor hybrid, ~616 m, 571 s
- IO-3: Indoor-outdoor hybrid, ~720 m, 570 s
- Outdoor-1: Pure outdoor, ~501 m, 394 s
- Outdoor-2: Pure outdoor, ~889 m, 680 s
- Indoor-1: Pure indoor, ~137 m, 149 s
- Indoor-2: Pure indoor, ~91 m, 91 s
Each sequence contains a ROS bag (.bag) with three topics: /cam0/image_raw (sensor_msgs/Image, ~30 Hz), /imu0 (sensor_msgs/Imu, ~100 Hz), /gnss0 (sensor_msgs/NavSatFix, ~1 Hz). Ground truth trajectories are provided in TUM RGB-D format, generated offline by Fast-LIO2. Calibration files (camera intrinsics, camera-IMU extrinsics, IMU noise parameters) for ORB-SLAM3 and VINS-Fusion are included.
Indoor sequences have no valid GNSS data and serve as VIO-only baselines. Indoor-outdoor sequences feature corridors, squares, narrow passages, stationary periods, and environment transitions. Pure outdoor sequences include building blockages and GNSS multipath.
For documentation and updates, see: https://github.com/SZU-Rob-IPNP-Lab/Mobile-GVIO-Dataset
Files
IO-1.zip
Files
(52.8 GB)
| Name | Size | Download all |
|---|---|---|
|
md5:35b950dd11f19d0c8f9a967a4687aa5e
|
3.7 kB | Preview Download |
|
md5:5d8f5836cfa8d33bd6df43588d760289
|
1.2 GB | Preview Download |
|
md5:2a5439c7064ecc1a254f8a5790586742
|
950.9 MB | Preview Download |
|
md5:c12aad3a7bd2c7ff6e31c6be7c510a2d
|
13.8 GB | Preview Download |
|
md5:f5d81b850a36d95ade9ba4e90943fc4a
|
9.1 GB | Preview Download |
|
md5:3436edb8c7eedc999d931001318e0ce2
|
9.1 GB | Preview Download |
|
md5:265e9920943895b912a079bfefbb72f6
|
5.8 GB | Preview Download |
|
md5:c382009b6055cda19f00b11e35c94ebf
|
13.0 GB | Preview Download |
Additional details
Related works
- Is documented by
- Other: https://github.com/SZU-Rob-IPNP-Lab/Mobile-GVIO-Dataset (URL)