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Direct LiDAR Odometry: Fast Localization with Dense Point Clouds

Kenny Chen, Brett T. Lopez, Ali‐akbar Agha‐mohammadi, Ankur Mehta

发表年份
2021
引用次数
5
访问权限
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摘要

Field robotics in perceptually-challenging environments require fast and accurate state estimation, but modern LiDAR sensors quickly overwhelm current odometry algorithms. To this end, this paper presents a lightweight frontend LiDAR odometry solution with consistent and accurate localization for computationally-limited robotic platforms. Our Direct LiDAR Odometry (DLO) method includes several key algorithmic innovations which prioritize computational efficiency and enables the use of dense, minimally-preprocessed point clouds to provide accurate pose estimates in real-time. This is achieved through a novel keyframing system which efficiently manages historical map information, in addition to a custom iterative closest point solver for fast point cloud registration with data structure recycling. Our method is more accurate with lower computational overhead than the current state-of-the-art and has been extensively evaluated in multiple perceptually-challenging environments on aerial and legged robots as part of NASA JPL Team CoSTAR's research and development efforts for the DARPA Subterranean Challenge.

关键词

OdometryLidarPoint cloudComputer scienceArtificial intelligenceRoboticsComputer visionKey (lock)SolverOverhead (engineering)

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