点云配准:当前状态,挑战问题和未来方向的迷你回顾

IF 0.9 Q4 GEOSCIENCES, MULTIDISCIPLINARY AIMS Geosciences Pub Date : 2023-01-01 DOI:10.3934/geosci.2023005
N. Brightman, L. Fan, Yang Zhao
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引用次数: 3

摘要

点云是空间中的一组数据点。点云配准是将从同一场景的不同位置收集的两个或多个3D点云对齐的过程。配准可以将点云数据转换为一个通用的坐标系,形成一个代表被测场景的完整数据集。除了那些依赖于在数据捕获之前放置在场景中的目标的配准方法之外,还有各种基于仅使用捕获的点云数据的配准方法。直到最近,云到云的注册方法通常集中在使用从粗到细的优化策略上。在过去的三十年里,这个过程中固有的挑战和限制塑造了点云配准和相关软件工具的发展。基于深度学习方法在图像数据中的成功应用,将这些方法应用于点云数据集的尝试受到了广泛关注。本研究在不使用任何目标的情况下回顾和评论了点云配准的最新发展,并探讨了遗留问题,并在此基础上对该主题的潜在未来研究提出了建议。
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Point cloud registration: a mini-review of current state, challenging issues and future directions
A point cloud is a set of data points in space. Point cloud registration is the process of aligning two or more 3D point clouds collected from different locations of the same scene. Registration enables point cloud data to be transformed into a common coordinate system, forming an integrated dataset representing the scene surveyed. In addition to those reliant on targets being placed in the scene before data capture, there are various registration methods available that are based on using only the point cloud data captured. Until recently, cloud-to-cloud registration methods have generally been centered upon the use of a coarse-to-fine optimization strategy. The challenges and limitations inherent in this process have shaped the development of point cloud registration and the associated software tools over the past three decades. Based on the success of deep learning methods applied to imagery data, attempts at applying these approaches to point cloud datasets have received much attention. This study reviews and comments on more recent developments in point cloud registration without using any targets and explores remaining issues, based on which recommendations on potential future studies in this topic are made.
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来源期刊
AIMS Geosciences
AIMS Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
自引率
7.70%
发文量
31
审稿时长
8 weeks
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