Chen Lei, Feng Changzhou, Ma Yunpeng, Zhao Yikai, Wang Chaorong
School of Information Engineering, Tianjin University of Commerce, Tianjin, China.
Front Neurorobot. 2024 Jan 4;17:1281332. doi: 10.3389/fnbot.2023.1281332. eCollection 2023.
With the development of 3D scanning devices, point cloud registration is gradually being applied in various fields. Traditional point cloud registration methods face challenges in noise, low overlap, uneven density, and large data scale, which limits the further application of point cloud registration in actual scenes. With the above deficiency, point cloud registration methods based on deep learning technology gradually emerged. This review summarizes the point cloud registration technology based on deep learning. Firstly, point cloud registration based on deep learning can be categorized into two types: complete overlap point cloud registration and partially overlapping point cloud registration. And the characteristics of the two kinds of methods are classified and summarized in detail. The characteristics of the partially overlapping point cloud registration method are introduced and compared with the completely overlapping method to provide further research insight. Secondly, the review delves into network performance improvement summarizes how to accelerate the point cloud registration method of deep learning from the hardware and software. Then, this review discusses point cloud registration applications in various domains. Finally, this review summarizes and outlooks the current challenges and future research directions of deep learning-based point cloud registration.
随着三维扫描设备的发展,点云配准逐渐在各个领域得到应用。传统的点云配准方法在噪声、重叠度低、密度不均匀和数据规模大等方面面临挑战,这限制了点云配准在实际场景中的进一步应用。鉴于上述不足,基于深度学习技术的点云配准方法逐渐出现。本文综述了基于深度学习的点云配准技术。首先,基于深度学习的点云配准可分为两类:完全重叠点云配准和部分重叠点云配准。并对这两种方法的特点进行了详细分类和总结。介绍了部分重叠点云配准方法的特点,并与完全重叠方法进行了比较,以提供进一步的研究见解。其次,综述深入探讨了网络性能提升,总结了如何从硬件和软件方面加速深度学习的点云配准方法。然后,本文讨论了点云配准在各个领域的应用。最后,本文总结并展望了基于深度学习的点云配准当前面临的挑战和未来的研究方向。