基于特征点改进的4PCS樱桃树三维点云配准方法
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山东省自然科学基金项目(ZR2020MC084)


Improved 4PCS Cherry Tree 3D Point Cloud Rgistration Method Based on Feature Points
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    摘要:

    针对点云配准会消耗较多时间资源、配准误差较大等问题,提出一种基于3D-SIFT 特征点改进的4PCS配准方法。通过深度相机对樱桃树4个方位进行扫描,获取樱桃树三维点云数据。首先,使用直通滤波和统计滤波,设计一个点云去噪框架,筛选高质量三维点云;其次,应用SIFT算法对樱桃树点云进行特征提取,减少数据的维度,增强特征稳定性;再次,将获得的源特征点集和目标特征点集,作为4PCS算法原始数据输入进行点云粗配准,获得精确位姿;最后,利用ICP算法进行精细配准,使其匹配状态最佳。以不同树型樱桃树点云数据为实验对象,引入消耗时间和均方根误差,作为配准评估标准。实验结果表明,在粗配准阶段,本文配准方法耗时分别为4.16、4.33 s,均方根误差分别为 0.953、1.810 cm,有 效降低了配准误差,缩短了配准时间。另外,在精配准阶段,本文选用ICP算法,并进行多组精配准实验,结合本文方法整个配准时间为4.84 s,均方根误差为 0.845 cm,配准时间和配准误差均达到最优。

    Abstract:

    Aiming at solving the the problems of excessive time consumption and low registration efficiency caused by the4PCS algorithm when registrating the point cloud data, a improved4PCS coarse registration method based on the3D-SIFT feature point was proposed. The point cloud data of the cherry tree was collected from four directions by DK depth camera. Firstly, a point cloud denoising framework was designed by using traight-through filtering and statistical filtering to screen high-quality three-dimensional point cloud. Secondly, the SIFT algorithm was applied to extract features from cherry tree point cloud, which reduced data dimensions and enhanced feature stability. Thirdly, the obtained set of points about source feature and target feature were used as initial data of the 4PCS algorithm, and the coarse registration was carried out. Finally, after obtaining the precise pose, the ICP algorithm was used for precision registration until the best matching state was achieved. Taking cherry tree point cloud data of different types as the experimental objects to registration experiments, the time consuming and the root maen square error indexes were introduced to evaluate the experiments. In the coarse registration stage, the results showed that the registration time of the proposed registration method was 4.16 s and 4.33 s, respectively. The root mean square error was 0.953 cm and 1.810 cm, respectively, which effectively reduced the registration error and shortened the registration time. The results of multiple precision registration experiments demonstrated that both the overall point cloud registration time and registration error achieved optimal values based on the fusion of the proposed method and the ICP algorithm in the precision registration. The whole registration time was 4.84 s and the root mean square error was 0.845 cm.

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李云飞,李振东,杨立伟,刘刚,吕树盛,宫艳晶.基于特征点改进的4PCS樱桃树三维点云配准方法[J].农业机械学报,2024,55(s1):256-262. LI Yunfei, LI Zhendong, YANG Liwei, LIU Gang, Lü Shusheng, GONG Yanjing. Improved 4PCS Cherry Tree 3D Point Cloud Rgistration Method Based on Feature Points[J]. Transactions of the Chinese Society for Agricultural Machinery,2024,55(s1):256-262.

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  • 收稿日期:2024-07-19
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  • 在线发布日期: 2024-12-10
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