Automated maintenance and motion planning for unpaved roads are research areas of great interest in the field robotics. Constructing such systems necessitates the development of surface maps for unpaved roads. However, the lack of distinctive features on unpaved roads degrades the performance of light detection and ranging (LiDAR)-based mapping. To address this problem, this paper proposes three-dimensionalized feature-based LiDAR-visual odometry (TFB odometry) for the online mapping of unpaved road surfaces. TFB odometry introduces a novel interpolation concept to directly estimate the three-dimensional coordinates of the image features using LiDAR. Furthermore, LiDAR intensity-weighted motion estimation is proposed to effectively mitigate the effects of dust, which significantly impact the performance of LiDAR. Finally, TFB odometry includes pose graph optimization to efficiently fuse global navigation satellite system data and poses estimated from motion estimation. Through field experiments on unpaved roads, TFB odometry demonstrated successful online full mapping and outperformed other simultaneous localization and mapping methods. Additionally, it demonstrated remarkable performance in accurately mapping road surface anomalies, even in dusty regions.
CITATION STYLE
Lee, J., Kurisu, M., & Kuriyama, K. (2024). Three-dimensionalized feature-based LiDAR-visual odometry for online mapping of unpaved road surfaces. Journal of Field Robotics, 41(5), 1452–1468. https://doi.org/10.1002/rob.22334
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