三维点云最新研究技术综述

Zhang Xin
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引用次数: 0

摘要

近年来,点云在计算机视觉、医学图像处理、虚拟与增强现实、自动驾驶、机器人等领域得到了广泛的应用。尽管深度学习方法在处理二维数据方面取得了显著成就,但在处理三维点云数据时仍然面临一些独特的挑战[1]。点云的非结构化和不规则性使得传统的深度学习方法难以直接应用,因此点云深度学习还处于起步阶段。然而,在点云的深度学习领域已经取得了一些进展。研究人员提出了许多创新的方法和网络架构来解决点云数据的分类、分割、生成和检测等任务。这些方法包括PointNet[2]、PointRCNN[9]等网络结构以及各种数据增强和优化策略。这些研究成果为点云深度学习的发展奠定了基础,为今后的研究提供了重要的参考和启示。
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A Review Of The Latest Research Technologies Related To 3D Point Cloud
In recent years, point clouds have been widely used in fields such as computer vision, medical image processing, virtual and augmented reality, autonomous driving, and robotics. Despite the remarkable achievements of deep learning methods in processing 2D data, they still face some unique challenges when processing 3D point cloud data [1]. The unstructured and irregular nature of point clouds makes it difficult to directly apply traditional deep learning methods, so point cloud deep learning is still in its infancy. However, some progress has been made in the field of deep learning for point clouds. Researchers have proposed many innovative methods and network architectures for solving tasks such as classification, segmentation, generation, and detection of point cloud data. These methods include the network structure of PointNet [2], PointRCNN [9] and so on as well as various data enhancement and optimization strategies. These research results laid the foundation for the development of point cloud deep learning, and provided important reference and inspiration for future research.
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