An Improved ICP Registration Algorithm by Combining PointNet++ and ICP Algorithm

Yuewang He, Chang-Hee Lee
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引用次数: 9

Abstract

A registration algorithm matches two point clouds into one same coordinate system, which is widely used in object reconstruction and positioning of autonomous cars. The traditional point cloud registration algorithm such as an ICP cannot meet the requirements of initial value independence and real-time, furthermore, most improved ICP algorithms are based on the extraction of a single feature. Since PointNet++ is a deep learning model that can directly consume a disordered point cloud, we combine PointNet++ with ICP for a new registration method. Multiple features can be extracted by PointNet++, and these features are used as the basis for the registration. Then, the rotation and translation can be calculated by ICP algorithm. Experiments show that our registration method can achieve fast and robust registration.
结合pointnet++和ICP算法的改进ICP配准算法
一种将两个点云匹配到同一个坐标系的配准算法,广泛应用于自动驾驶汽车的目标重建和定位。传统的点云配准算法(如ICP)不能满足初始值独立性和实时性的要求,而且大多数改进的ICP算法都是基于单个特征的提取。由于PointNet++是一个可以直接消费无序点云的深度学习模型,我们将PointNet++ +与ICP相结合,提出了一种新的配准方法。使用PointNet++可以提取多个特征,并将这些特征作为配准的基础。然后,通过ICP算法计算旋转和平移。实验表明,该方法可以实现快速、鲁棒的配准。
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