1. 山东大学控制科学与工程学院,济南,250061
2. 中国飞行试验研究院,西安,710089
纸质出版:2025
移动端阅览
刘国良, 阮怡鑫, 郑永帅, 等. 基于误差引导阈值调整机制的点云配准方法[J]. 航空制造技术, 2025,(21).
LIU Guoliang, RUAN Yixin, ZHENG Yongshuai, et al. A Novel Point Cloud Registration Method With Error-Guided Threshold Adjustment Mechanism[J]. Aeronautical Manufacturing Technology, 2025, (21).
刘国良, 阮怡鑫, 郑永帅, 等. 基于误差引导阈值调整机制的点云配准方法[J]. 航空制造技术, 2025,(21). DOI: 10.16080/j.issn1671-833x.2025.21.014.
LIU Guoliang, RUAN Yixin, ZHENG Yongshuai, et al. A Novel Point Cloud Registration Method With Error-Guided Threshold Adjustment Mechanism[J]. Aeronautical Manufacturing Technology, 2025, (21). DOI: 10.16080/j.issn1671-833x.2025.21.014.
针对传统迭代最近点(Iterative closest point,ICP)算法容易在低重叠场景和噪声干扰下失效的问题,本文提出了一种基于误差引导阈值调整机制的改进ICP 点云配准方法,旨在提升点云配准的精度与鲁棒性。在粗配准阶段,结合快速点特征直方图与随机采样一致性算法,通过随机采样并引入三角形相似性约束,选择特征显著的对应点对,初步估计点云间的位姿变换。在精配准阶段,提出的误差引导阈值调节机制根据每次迭代中的匹配误差动态调整距离阈值,确保源点云中每一个点仅与目标点云中阈值范围内的最近点进行匹配,有效剔除无效对应关系。该方法在多个公开点云数据集上进行了验证,包括复杂几何结构模型及大规模场景,试验结果表明本文提出的方法显著提高了点云配准精度,即使在低重叠率和具有噪声的场景中仍然表现良好。
To address the limitations of traditional ICP (Iterative closest point) algorithms in low-overlap scenarios and under noisy interference
this paper proposes an improved ICP point cloud registration method based on an errorguided threshold adjustment mechanism. The approach aims to enhance the accuracy and robustness of point cloud registration. During the coarse registration stage
fast point feature histograms (FPFH) are combined with the random sample consensus (RANSAC) algorithm. By employing random sampling and introducing a triangle similarity constraint
distinctive corresponding point pairs are selected to estimate the initial pose transformation between point clouds. In the fine registration stage
an error-guided threshold adjustment mechanism dynamically updates the distance threshold based on the matching error in each iteration. This ensures that each point in the source point cloud is matched only to its nearest point within the adaptive threshold in the target point cloud
thereby effectively filtering out invalid correspondences. The proposed method is validated on multiple public point cloud datasets
including models with complex geometric structures and large-scale scenes. Experimental results demonstate that the method significantly improves registration accuracy and maintains robust performance even under challenging conditions such as low overlap and high noise levels.
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