Gong Yuanzheng, Seibel Eric J
Mechanical Engineering Department, University of Washington, Seattle, Washington, USA, 98195.
J Inf Technol Softw Eng. 2016 Aug;6(4). doi: 10.4172/2165-7866.1000184. Epub 2016 Aug 26.
As an important step in three-dimensional (3D) machine vision, 3D registration is a process of aligning two or multiple 3D point clouds that are collected from different perspectives together into a complete one. The most popular approach to register point clouds is to minimize the difference between these point clouds iteratively by Iterative Closest Point (ICP) algorithm. However, ICP does not work well for repetitive geometries. To solve this problem, a feature-based 3D registration algorithm is proposed to align the point clouds that are generated by vision-based 3D reconstruction. By utilizing texture information of the object and the robustness of image features, 3D correspondences can be retrieved so that the 3D registration of two point clouds is to solve a rigid transformation. The comparison of our method and different ICP algorithms demonstrates that our proposed algorithm is more accurate, efficient and robust for repetitive geometry registration. Moreover, this method can also be used to solve high depth uncertainty problem caused by little camera baseline in vision-based 3D reconstruction.
作为三维(3D)机器视觉中的重要一步,3D配准是将从不同视角收集的两个或多个3D点云对齐为一个完整点云的过程。最常用的点云配准方法是通过迭代最近点(ICP)算法迭代地最小化这些点云之间的差异。然而,ICP对于重复几何形状效果不佳。为了解决这个问题,提出了一种基于特征的3D配准算法,用于对齐基于视觉的3D重建生成的点云。通过利用物体的纹理信息和图像特征的鲁棒性,可以检索3D对应关系,从而使两个点云的3D配准就是求解一个刚体变换。我们的方法与不同ICP算法的比较表明,我们提出的算法对于重复几何形状配准更准确、高效且鲁棒。此外,该方法还可用于解决基于视觉的3D重建中由于相机基线较小而导致的高深度不确定性问题。