机器人测量中低重叠多视点云的快速配准方法

Chuangchuang Li , Xubin Lin , Zhaoyang Liao , Hongmin Wu , Zhihao Xu , Xuefeng Zhou
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引用次数: 0

摘要

随着机械自动化和智能加工技术的快速发展,复杂零件表面的精确测量已成为一个重大的研究挑战。机器人测量技术由于其固有的灵活性,在制造过程中的快速质量检测中起着至关重要的作用。然而,复杂零件的不规则形状和视点遮挡使精确测量变得困难。为了解决这些挑战,本工作提出了机器人扫描系统的点云配准网络,并引入了DBR-Net(双线配准网络),以克服目前阻碍某些工件配准的低重叠率和透视遮挡问题。首先,使用双线性编码器和点向和全局特征的多级特征交互进行特征提取。随后,通过一致投票对特征进行采样,并将其输入RANSAC (Random Sample Consensus)算法进行姿态估计,从而实现多视点云配准。实验结果表明,该方法在特征提取和配准精度方面明显优于现有的许多技术,从而提高了点云配准的整体性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast registration method for multi-view point clouds with low overlap in robotic measurement
With the rapid advancement of mechanical automation and intelligent processing technology, accurately measuring the surfaces of complex parts has emerged as a significant research challenge. Robotic measurement technology plays a crucial role in facilitating rapid quality inspections during the manufacturing process due to its inherent flexibility. However, the irregular shapes and viewpoint occlusions of complex parts complicate precise measurement. To address these challenges, this work proposes a point cloud registration network for robotic scanning systems and introduces a DBR-Net (Dual-line Registration Network) to overcome the issues of low overlap rates and perspective occlusion that currently impede the registration of certain workpieces. First, feature extraction is performed using a bilinear encoder and multi-level feature interactions of both point-wise and global features. Subsequently, the features are sampled through unanimous voting and fed into the RANSAC (Random Sample Consensus) algorithm for pose estimation, enabling multi-view point cloud registration. Experimental results demonstrate that this method significantly outperforms many existing techniques in terms of feature extraction and registration accuracy, thereby enhancing the overall performance of point cloud registration.
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CiteScore
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