Skip to content

A Multi-sensor SLAM Dataset Focusing on Corner Cases for Ground Robots (ROBIO2023)

Notifications You must be signed in to change notification settings

sjtuyinjie/Ground-Challenge

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

86 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Ground-Challenge

A Multi-sensor SLAM Dataset Focusing on Corner Cases for Ground Robots

Figure 1. Different corner cases for SLAM

Notice:

We strongly recommend that the newly proposed SLAM algorithm be tested on our Ground-Challenge benchmark, because our data has following features:

  1. A rich pool of sensory information including RGBD, wheel, IMU and so on.

  2. This benchmark includes diverse corner cases such as aggressive motion, severe occlusion, changing illumination, few textures, pure rotation, motion blur, wheel suspension, etc.

  3. This benchmark brings great challenge to existing cutting-edge SLAM algorithms including VINS-Mono, ORB-SLAM3, VINS-RGBD, VIW-Fusion and TartanVO. If your proposed algorihm outperforms SOTA systems on this dataset, your paper will be much more convincing and valuable.

License

The paper link is here.If you use Ground-Challenge in an academic work, please cite:

@inproceedings{yin2023ground,
  title={Ground-challenge: A multi-sensor slam dataset focusing on corner cases for ground robots},
  author={Yin, Jie and Yin, Hao and Liang, Conghui and Jiang, Haitao and Zhang, Zhengyou},
  booktitle={2023 IEEE International Conference on Robotics and Biomimetics (ROBIO)},
  pages={1--5},
  year={2023},
  organization={IEEE}
}

ABSTRACT:

We introduce Ground-Challenge: a novel dataset collected by a ground robot with multiple sensors including an RGB-D camera, an inertial measurement unit (IMU), a wheel odometer and a 3D LiDAR to support the research on corner cases of visual SLAM systems. Our dataset comprises 36 trajectories with diverse corner cases such as aggressive motion, severe occlusion, changing illumination, few textures, pure rotation, motion blur, wheel suspension, etc. Some state-of-the-art SLAM algorithms are tested on our dataset, showing that these systems are seriously drifting and even failing on specific sequences. We will release the dataset and relevant materials upon paper publication to benefit the research community.

1.SENSOR SETUP

1.1 Acquisition Platform

The ground robot is given below. The unit of the figures is centimeter.

Figure 2. The data capture robot.

1.2 Sensor parameters

All the sensors and track devices and their most important parameters are listed as below:

  • LIDAR Velodyne VLP-16, 360 Horizontal Field of View (FOV),-30 to +10 vertical FOV,10Hz,Max Range 200 m,Range Resolution 3 cm, Horizontal Angular Resolution 0.2°.

  • V-I Sensor,Realsense d435i,RGB/Depth 640*480,69H-FOV,42.5V-FOV,15Hz;IMU 6-axix, 200Hz

  • IMU,Xsens Mti-300,9-axis,400Hz;

  • Wheel Odometer,AgileX,2D,25Hz;

The rostopics of our rosbag sequences are listed as follows:

  • LIDAR: /velodyne_points

  • V-I Sensor:
    /camera/color/image_raw ,
    /camera/depth/image_raw ,
    /camera/imu

  • IMU: /imu/data

  • Wheel Odometer: /odom

2.DATASET SEQUENCES

An overview of Ground-Challenge is given in the table below:

Scenario Darkroom Occlusion Office Room Wall Motionblur Hall Loop Roughroad Corridor Rotation Static Slope TOTAL
Number 3 4 3 3 3 3 3 2 3 2 3 2 2 36
Dist/m 92.0 273.8 75.5 102.1 86.7 166.6 236.3 371.8 68.1 164.3 12.4 1.9 128.5 1780.0
Duration/s 203.6 334.2 164.0 154.7 189.3 145.5 302.4 332.7 186.3 198.1 183.2 92.6 195.0 2681.6
Size/GB 6.1 9.9 4.7 4.6 5.6 4.3 8.7 9.9 5.4 5.8 5.4 2.7 5.7 78.8

2.1 Visual Challenges

Sequence Name Total Size Duration Features Rosbag
Darkroom1 2.9g 100s slight light, going into a room Rosbag
Darkroom2 2.3g 76s sharp turn Rosbag
Darkroom3 1.9g 64s slight light Rosbag
Occlusion1 2.9g 97s moving feet, far features Rosbag
Occlusion2 3.2g 108s hand occlusion Rosbag
Occlusion3 2.6g 89s hand occlusion Rosbag
Occlusion4 1.2g 40s complete occlusion Rosbag
Office1 1.3g 46s exposure change Rosbag
Office2 1.9g 66s going into a dark room Rosbag
Office3 1.5g 52s office Rosbag
Room1 1.3g 46s exposure change Rosbag
Room2 1.9g 66s going into a dark room Rosbag
Room3 1.5g 52s office Rosbag
Motionblur1 1.5g 52s aggressive motion Rosbag
Motionblur2 1.6g 54s aggressive motion Rosbag
Motionblur3 1.2g 40s aggressive motion Rosbag
Wall1 1.7g 59s wall in a corridor Rosbag
Wall2 2.0g 66s wall in a big hall Rosbag
Wall3 3.9g 65s wall in a corridor Rosbag

2.2 Wheel Challenge

Sequence Name Total Size Duration Features Rosbag
Hall1 2.6g 91s slippery ground, a reflective surface Rosbag
Hall2 3.2g 110s slippery ground, a reflective surface Rosbag
Hall3 2.9g 101s slippery ground, walking human Rosbag
Loop1 4.1g 97s moving feet, far features Rosbag
Loop2 5.8g 137s hand occlusion Rosbag
Roughroad1 2.2g 75s rough road Rosbag
Roughroad2 1.5g 52s rough road Rosbag
Roughroad3 1.8g 59s rough road Rosbag

2.3 Specific Movement Patterns

Sequence Name Total Size Duration Features Rosbag
Corridor1 2.9g 100s zigzag, long corridor Rosbag
Corridor2 2.9g 98s straight forward, long corridor Rosbag
Rotation1 1.6g 53s moving feet, far features Rosbag
Rotation2 2.1g 73s hand occlusion Rosbag
Rotation3 1.7g 57s rough road Rosbag
Static1 1.6g 56s rough road Rosbag
Static2 1.1g 37s rough road Rosbag
Slope1 2.8g 96s slope Rosbag
Slope2 2.9g 99s slope Rosbag

3. Configuration Files

We provide configuration files for several cutting-edge baseline methods, including VINS-RGBD,TartanVO,VINS-Mono and VIW-Fusion.

Star History

Star History Chart

About

A Multi-sensor SLAM Dataset Focusing on Corner Cases for Ground Robots (ROBIO2023)

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Languages