An Efficient Convex Hull-based Vehicle Pose Estimation Method for 3D
LiDAR
- URL: http://arxiv.org/abs/2302.01034v3
- Date: Tue, 6 Feb 2024 05:33:24 GMT
- Title: An Efficient Convex Hull-based Vehicle Pose Estimation Method for 3D
LiDAR
- Authors: Ningning Ding
- Abstract summary: Vehicle pose estimation with LiDAR is essential in the perception technology of autonomous driving.
It is challenging to achieve satisfactory pose extraction based on 3D LiDAR with the existing pose estimation methods.
We propose a novel vehicle pose estimation method based on the convex hull.
- Score: 1.9580473532948401
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Vehicle pose estimation with LiDAR is essential in the perception technology
of autonomous driving. However, due to incomplete observation measurements and
sparsity of the LiDAR point cloud, it is challenging to achieve satisfactory
pose extraction based on 3D LiDAR with the existing pose estimation methods. In
addition, the demand for real-time performance further increases the difficulty
of the pose estimation task. In this paper, we propose a novel vehicle pose
estimation method based on the convex hull. The extracted 3D cluster is reduced
to the convex hull, reducing the subsequent computation burden while preserving
essential contour information. Subsequently, a novel criterion based on the
minimum occlusion area is developed for the search-based algorithm, enabling
accurate pose estimation. Additionally, this criterion renders the proposed
algorithm particularly well-suited for obstacle avoidance. The proposed
algorithm is validated on the KITTI dataset and a manually labeled dataset
acquired at an industrial park. The results demonstrate that our proposed
method can achieve better accuracy than the classical pose estimation method
while maintaining real-time speed.
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