2022
DOI: 10.1109/tgrs.2021.3097134
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Bollard Segmentation and Position Estimation From Lidar Point Cloud for Autonomous Mooring

Abstract: This paper presents a computer-aided object detection and localization method from lidar 3D point cloud data. This topic of interest is in the framework of autonomous mooring, where the ship is tied to the rigid structure onshore (bollard) for autonomous maritime navigation. Using shape and features priors, unlike matching the whole object template to the experimental 3D point cloud representation of scene, two customized algorithms -(a) 3D feature matching (3DFM) and (b) Mixed feature-correspondence matching … Show more

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Cited by 10 publications
(5 citation statements)
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“…To compare our proposed method, we further implemented an early fusion algorithm that is widely used in the literature as reference. Fusing data from LiDAR and camera before performing any other downstream tasks is a very traditional method present not only for object localization, but in several other domains [13], [22], [23]. It overlays each 3D point from LiDAR complete point cloud in the image pixel space, so each 3D point is mapped to its corresponding image pixel.…”
Section: Comparison With Other Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…To compare our proposed method, we further implemented an early fusion algorithm that is widely used in the literature as reference. Fusing data from LiDAR and camera before performing any other downstream tasks is a very traditional method present not only for object localization, but in several other domains [13], [22], [23]. It overlays each 3D point from LiDAR complete point cloud in the image pixel space, so each 3D point is mapped to its corresponding image pixel.…”
Section: Comparison With Other Methodsmentioning
confidence: 99%
“…Not so commonly, some attempts to estimate 3D object localization from 2D images can be found in the literature [12], but those are highly dependent on the training data distribution. To overcome the limitations, LiDAR sensors offer a dense point cloud of the environment and is considered a complement to vision sensors [13]. While cameras give a rich visual representation in 2D, point clouds give the location of objects in 3D as well as more information about shape and occupancy.…”
Section: Related Workmentioning
confidence: 99%
“…The performance of the proposed system was analyzed during several berthing maneuvers and compared to the performance of the commonly used GNSS-based navigational aid system, proving its usefulness in safe berthing experimentally. Additionally, bollard segmentation and position estimation from lidar point cloud data for autonomous mooring was proposed in [80]. Moreover, the authors in [81] developed a system based on the dual-channel lidar for rotorcraft searching, positioning, tracking, and landing on a ship at sea.…”
Section: Monitoring Ocean Ecosystems [85]mentioning
confidence: 99%
“…While many other sensors, e.g., LiDAR [18], RADAR [27] and SONAR [16], have been proposed, cameras serve as a low-cost and lightweight alternative. Cameras capture the surrounding environment and provide rich features of a scene.…”
Section: Introductionmentioning
confidence: 99%