基于船载激光雷达的智能船舶靠泊状态感知方法

A method for intelligent ship berthing status detection based on shipborne LiDAR

  • 摘要: 针对船舶靠离泊过程中的定位精度不足及感知能力受限等问题,提出一种基于船载激光雷达的高精度靠泊状态感知方法。首先,构建统一坐标体系与时间同步策略,对点云数据进行滤波预处理;其次,提出基于曲率与主成分分析联合特征提取的点云配准方法,建立点线与点面约束模型实现位姿解算;最后,通过基于视觉先验约束的随机抽样一致性算法提取泊位前沿,引入姿态补偿计算靠泊距离与靠泊角。在“新红专”轮实船试航数据上开展实验验证,结果表明算法平均绝对轨迹误差为 0.274 m,平均姿态角测量误差小于 0.29°;船舶与泊位间平均靠泊距离误差小于 0.032 m,平均靠泊角误差小于 0.25°。证明该靠泊状态感知算法的准确度和鲁棒性,为智能船舶自主靠离泊控制提供可靠支持。

     

    Abstract: Objectives To address issues such as insufficient positioning accuracy and limited perception capabilities during ship berthing and unberthing operations, this paper proposes a high-precision berthing status perception method based on shipborne LiDAR. Methods First, a unified coordinate system and time synchronization strategy are established to perform filtering and preprocessing of point cloud data. Second, a point cloud registration method based on a combination of curvature and principal component analysis for feature extraction is proposed, and a constraint model of point-line and point-plane relationships is established to achieve pose estimation. Finally, the berth front is extracted using a random sampling consistency algorithm based on visual prior constraints, and pose compensation is introduced to calculate the berthing distance and berthing angle. Results Experimental validation was conducted using data from the sea trials of the “Xin Hongzhuan” vessel. The results show that the algorithm achieved an average absolute trajectory error of 0.274 m and an average attitude angle estimation error of less than 0.29°; the average berthing distance error between the vessel and the berth was less than 0.032 m, and the average berthing angle error was less than 0.25°. Conclusions This demonstrates the accuracy and robustness of the berthing state detection algorithm, providing reliable support for autonomous berthing and unberthing control in smart ships.

     

/

返回文章
返回