VPD-Map:直观点云描述符与顶视图特征地图,用于直接视觉里程计中的无视点环路封闭

Ruitao Zhang, Yafei Wang, Shaoteng Wu
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引用次数: 0

摘要

闭环闭合是提高SLAM系统精度的关键步骤,可以减少前端测程引起的漂移,保证测绘过程的全局一致性。在传统的视觉SLAM系统中,这通常通过提取和匹配图像特征来完成。闭环检测的精度和闭环提供的位姿约束的精度是制约闭环精度的瓶颈。鉴于图像特征对大视点变化敏感,本文提出了一种新的神经网络结构VPD-Map,该结构以视觉点云为全局三维视觉描述符,用于快速闭环检测,并以俯视图特征图为姿态约束先验。由于描述符和特征映射仅基于视觉点云信息,因此对视点变化具有鲁棒性。VPD-Map也可以作为可视化slam系统的后端。在KITTI Odometry数据集上进行的闭环检测实验表明,该描述符可以进行无视点的闭环检测,并且优于传统的循环检测算法如bag-of-word模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VPD-Map: Visual Pointcloud Descriptor with Top-view Feature Map for Viewpoint-Free Loop Closure in Direct Visual Odometry
Loop closing is a crucial step to improve the accuracy of a SLAM system, which can reduce drift caused by frontend odometry and ensure global consistency of mapping process. In a traditional visual SLAM system, this is usually done by extracting and matching image features. The accuracy of the loop closure detection and the precision of the pose-constraint provided by loop closing is the bottleneck restricting the loop closing accuracy. Since image features is sensitive to large viewpoint changes, in this paper, we propose a novel neural network architecture VPD-Map, which takes visual pointcloud to provide a global 3D visual descriptor for fast loop closure detection and a top-view feature map for pose-constraint prior. Since the descriptor and feature map are based solely on visual pointcloud information, it is robust to viewpoint changes. VPD-Map can also serve as the backend of a visualSLAM system. Experiment on loop closure detection shows that this descriptor can perform viewpoint-free loop closure detection and outperforms traditional loop detection algorithms like bag-of-word model on the KITTI Odometry Dataset.
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