基于点云的三维水下姿态估计使用RANSAC和VFH描述符

Quanfeng Wang, Yuanxu Zhang, Chen Li, Jian Gao
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摘要

水下位姿估计在水下定位和操作过程中起着重要的作用。本文采用深度相机采集点云数据,通过RanSanc算法对得到的点云数据进行聚类,以准确识别目标的三维点云数据。通过提取目标三维点云数据的视图特征直方图(view feature histogram, VFH)用于后续姿态估计研究,避免了整体点云数据量大所带来的耗时和费力。然后,利用二维码真值测量系统对不同姿态下的VFH描述符进行训练和标定,并利用kd-tree邻居搜索结构保存训练集;最后,通过水箱实验验证了姿态估计算法的准确性和可行性。
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Point Cloud-based 3D Underwater Pose Estimation Using RANSAC and VFH Descriptors
Underwater pose estimation plays an important role in the process of underwater positioning and operation. In this paper, the point cloud data are collected by a depth camera, and the obtained point cloud data are clustered by RanSanc algorithm to accurately identify the 3D point cloud data of the target. By extracting the view feature histogram(VFH) of the target 3D point cloud data for subsequent pose estimation research, the time-consuming and labor-consuming caused by the large amount of overall point cloud data is avoided. Then, the VFH descriptors in different pose are trained and calibrated by the two-dimensional code truth measurement system, and the training set is saved by using the kd-tree neighbor search structure. Finally, the accuracy and feasibility of the proposed pose estimation algorithm are verified in a water tank experiments.
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