TL;DR
This paper introduces CTE-MLO, a novel multi-LiDAR odometry approach that combines continuous-time estimation, localizability-aware sampling, and synchronization to improve real-time accuracy and robustness in LiDAR-based localization.
Contribution
It proposes a continuous-time multi-LiDAR odometry framework that efficiently fuses data from multiple sensors with localizability considerations within a Kalman filter.
Findings
Achieves high accuracy in various scenarios
Operates in real-time with few linear iterations
Demonstrates robustness in real-world applications
Abstract
In recent years, LiDAR-based localization and mapping methods have achieved significant progress thanks to their reliable and real-time localization capability. Considering single LiDAR odometry often faces hardware failures and degeneracy in practical scenarios, Multi-LiDAR Odometry (MLO), as an emerging technology, is studied to enhance the performance of LiDAR-based localization and mapping systems. However, MLO can suffer from high computational complexity introduced by dense point clouds that are fused from multiple LiDARs, and the continuous-time measurement characteristic is constantly neglected by existing LiDAR odometry. This motivates us to develop a Continuous-Time and Efficient MLO, namely CTE-MLO, which can achieve accurate and real-time estimation using multi-LiDAR measurements through a continuous-time perspective. In this paper, the Gaussian process estimation is…
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