激光雷达和摄影测量数据的点云配准:经典和深度学习算法的关键综合和性能分析

Ningli Xu , Rongjun Qin Ph.D. , Shuang Song
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引用次数: 6

摘要

三维(3D)点云配准是许多3D建模和映射应用程序的基本步骤。现有的方法在数据源、场景复杂性和应用程序方面高度不同,因此当前在各种点云注册任务中的实践仍然是自组织的过程。计算机视觉和深度学习的最新进展在估计复杂对象和场景的未注册点云之间的刚性/相似性变换方面显示出了良好的性能。然而,它们的性能大多是使用来自单个传感器(如Kinect或RealSense相机)的有限数量的数据集进行评估的,缺乏对其在摄影测量3D测绘场景中的适用性的全面概述。在这项工作中,我们对最先进的(SOTA)点云注册方法进行了全面的回顾,我们使用从室内到卫星源的一组不同的点云数据来分析和评估这些方法。定量分析允许探索这些方法的优势、适用性、挑战和未来趋势。与现有的将点云配准作为一个整体过程引入的分析工作相比,我们的实验分析基于其固有的两步过程,以更好地理解这些方法,包括基于特征/关键点的初始粗配准和通过云对云(C2C)优化的密集精细配准。测试了十多种方法,包括经典的手工制作、基于深度学习的特征对应和稳健的C2C方法。我们观察到,与我们测试的数据集相比,大多数算法的成功率都不到40%,并且在3D稀疏对应搜索以及注册具有复杂几何和遮挡的点云的能力方面,与现有算法相比仍有很大的改进空间。通过对三个数据集的统计数据进行评估,我们得出了每个步骤的最佳执行方法,并提供了我们的建议,并展望了未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Point cloud registration for LiDAR and photogrammetric data: A critical synthesis and performance analysis on classic and deep learning algorithms

Three-dimensional (3D) point cloud registration is a fundamental step for many 3D modeling and mapping applications. Existing approaches are highly disparate in the data source, scene complexity, and application, therefore the current practices in various point cloud registration tasks are still ad-hoc processes. Recent advances in computer vision and deep learning have shown promising performance in estimating rigid/similarity transformation between unregistered point clouds of complex objects and scenes. However, their performances are mostly evaluated using a limited number of datasets from a single sensor (e.g. Kinect or RealSense cameras), lacking a comprehensive overview of their applicability in photogrammetric 3D mapping scenarios. In this work, we provide a comprehensive review of the state-of-the-art (SOTA) point cloud registration methods, where we analyze and evaluate these methods using a diverse set of point cloud data from indoor to satellite sources. The quantitative analysis allows for exploring the strengths, applicability, challenges, and future trends of these methods. In contrast to existing analysis works that introduce point cloud registration as a holistic process, our experimental analysis is based on its inherent two-step process to better comprehend these approaches including feature/keypoint-based initial coarse registration and dense fine registration through cloud-to-cloud (C2C) optimization. More than ten methods, including classic hand-crafted, deep-learning-based feature correspondence, and robust C2C methods were tested. We observed that the success rate of most of the algorithms are fewer than 40% over the datasets we tested and there are still are large margin of improvement upon existing algorithms concerning 3D sparse corresopondence search, and the ability to register point clouds with complex geometry and occlusions. With the evaluated statistics on three datasets, we conclude the best-performing methods for each step and provide our recommendations, and outlook future efforts.

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