Abstract:
In this letter, we propose a tightly coupled LiDAR-inertial-visual (LIV) state estimator termed LIVER, which achieves robust and accurate localization and mapping in unde...Show MoreMetadata
Abstract:
In this letter, we propose a tightly coupled LiDAR-inertial-visual (LIV) state estimator termed LIVER, which achieves robust and accurate localization and mapping in underground environments. LIVER starts with an effective strategy for LIV synchronization. A robust initialization process that integrates LiDAR, vision, and IMU is realized. A tightly coupled, nonlinear optimization-based method achieves highly accurate LiDAR-inertial-visual odometry (LIVO) by fusing LiDAR, visual, and IMU information. We consider scenarios in underground environments that are unfriendly to LiDAR and cameras. A visual-IMU-assisted method enables the evaluation and handling of LiDAR degeneracy. A deep neural network is introduced to eliminate the impact of poor lighting conditions on images. We verify the performance of the proposed method by comparing it with the state-of-the-art methods through public datasets and real-world experiments, including underground mines. In underground mines test, tightly coupled methods without degeneracy handling lead to failure due to self-similar areas (affecting LiDAR) and poor lighting conditions (affecting vision). In these conditions, our degeneracy handling approach successfully eliminates the impact of disturbances on the system.
Published in: IEEE Robotics and Automation Letters ( Volume: 9, Issue: 3, March 2024)
Funding Agency:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Tight Coupling ,
- Underground Environment ,
- Deep Network ,
- Performance Of Method ,
- Poor Conditions ,
- Deep Neural Network ,
- Light Conditions ,
- Visual Information ,
- Public Datasets ,
- Real-world Experiments ,
- Underground Mining ,
- Poor Lighting Conditions ,
- Least Squares Regression ,
- Visual Features ,
- Monocular ,
- Pose Estimation ,
- Actual Length ,
- Left Figure ,
- Lidar Measurements ,
- Visual-inertial Odometry ,
- LiDAR Scans ,
- Factor Graph ,
- Linear Least Squares Problem ,
- Metric Scale ,
- Body Frame ,
- Camera Pose ,
- Figure Right ,
- Least Squares Problem
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Tight Coupling ,
- Underground Environment ,
- Deep Network ,
- Performance Of Method ,
- Poor Conditions ,
- Deep Neural Network ,
- Light Conditions ,
- Visual Information ,
- Public Datasets ,
- Real-world Experiments ,
- Underground Mining ,
- Poor Lighting Conditions ,
- Least Squares Regression ,
- Visual Features ,
- Monocular ,
- Pose Estimation ,
- Actual Length ,
- Left Figure ,
- Lidar Measurements ,
- Visual-inertial Odometry ,
- LiDAR Scans ,
- Factor Graph ,
- Linear Least Squares Problem ,
- Metric Scale ,
- Body Frame ,
- Camera Pose ,
- Figure Right ,
- Least Squares Problem
- Author Keywords