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An automatic registration algorithm for the scattered point clouds based on the curvature feature

机译:基于曲率特征的散点云自动配准算法

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摘要

Object modeling by the registration of multiple range images has important applications in reverse engineering and computer vision. In order to register multi-view scattered point clouds, a novel curvature-based automatic registration algorithm is proposed in this paper, which can solve the registration problem with partial overlapping point clouds. For two sets of scattered point clouds, the curvature of each point is estimated by using the quadratic surface fitting method. The feature points that have the maximum local curvature variations are then extracted. The initial matching points are acquired by computing the Hausdorff distance of curvature, and then the circumference shape feature of the local surface is used to obtain the accurate matching points from the initial matching points. Finally, the rotation and translation matrix are estimated by the quaternion, and an iterative algorithm is used to improve the registration accuracy. Experimental results show that the algorithm is effective.
机译:通过记录多个范围图像进行对象建模在逆向工程和计算机视觉中具有重要的应用。为了配准多视图散点云,提出了一种基于曲率的自动配准算法,可以解决部分重叠点云的配准问题。对于两组散布的点云,使用二次曲面拟合方法估算每个点的曲率。然后提取具有最大局部曲率变化的特征点。通过计算Hausdorff曲率距离获取初始匹配点,然后使用局部表面的圆周形状特征从初始匹配点中获得准确的匹配点。最后,通过四元数估计旋转和平移矩阵,并使用迭代算法提高配准精度。实验结果表明该算法是有效的。

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