2021
DOI: 10.1002/rob.22031
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LiDAR‐based robust localization for field autonomous vehicles in off‐road environments

Abstract: Robust localization is an essential capability for autonomous land vehicles. While a lot of work focused on structured environments, this article focuses on navigation in off-road environments. In the off-road environment, due to the lack of salient features, scan matching algorithms tend to degenerate. Therefore, the first contribution of this paper is to propose a reliable degeneracy indicator which can evaluate the scan matching performance. The evaluated degeneracy indicator is then integrated into the fac… Show more

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Cited by 18 publications
(11 citation statements)
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“…Since the lidar scans are not dense enough to distinguish between single branches, the trees resemble large blobs of randomly distributed points in the scans and ultimately in the map. Therefore, point cloud degradation is not limited to the large open areas that were mentioned by Ren et al (2021). In particular, we have observed that point cloud degradation led to the ICP localization to jump forwards of up to 0.5 m. Such jumps in ICP localization lead to instability and eventually to system failure.…”
Section: The Forest Corridor Effectmentioning
confidence: 77%
See 2 more Smart Citations
“…Since the lidar scans are not dense enough to distinguish between single branches, the trees resemble large blobs of randomly distributed points in the scans and ultimately in the map. Therefore, point cloud degradation is not limited to the large open areas that were mentioned by Ren et al (2021). In particular, we have observed that point cloud degradation led to the ICP localization to jump forwards of up to 0.5 m. Such jumps in ICP localization lead to instability and eventually to system failure.…”
Section: The Forest Corridor Effectmentioning
confidence: 77%
“…However, due to the location where this work was conducted, no analysis of the impact of snowfall is discussed. Recently, Ren et al (2021) have deployed a lidar localization system in a desert biome. They identified the lack of features and geometrical constraints as an issue for point cloud registration.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…These directions were selected based on a dynamic threshold and real-time updated. Extending the above two methods, Ren et al [11] proposed a reliable degeneracy indicator that can evaluate the scan-matching performance in off-road environments. The evaluated degeneracy indicator was then integrated into a factor graph optimization framework.…”
Section: A Related Workmentioning
confidence: 99%
“…The evaluated degeneracy indicator was then integrated into a factor graph optimization framework. However, these methods [9]- [11] only adopted a single sensor and were unable to optimize the degenerate dimension. Khattak et al [12] utilized a visual-inertial odometry and a thermal-inertial odometry to find robust priors for LiDAR pose estimation.…”
Section: A Related Workmentioning
confidence: 99%