In the field of large-scale SLAM for autonomous driving and mobile robotics, 3D point cloud based place recognition has aroused significant research interest due to its robustness to changing environments with drastic daytime and weather variance. However, it is time-consuming and effort-costly to obtain high-quality point cloud data for place recognition model training and ground truth for registration in the real world. To this end, a novel registration-aided 3D domain adaptation network for point cloud based place recognition is proposed. A structure-aware registration network is introduced to help to learn features with geometric information and a 6-DoFs pose between two point clouds with partial overlap can be estimated. The model is trained through a synthetic virtual LiDAR dataset through GTA-V with diverse weather and daytime conditions and domain adaptation is implemented to the real-world domain by aligning the global features. Our results outperform state-of-the-art 3D place recognition baselines or achieve comparable on the real-world Oxford RobotCar dataset with the visualization of registration on the virtual dataset.
翻译:在大型自动驾驶和移动机器人SLAM领域,基于3D点云的定位引起了巨大的研究兴趣,因为它对日间和天气差异巨大、不断变化的环境具有很强的活力;然而,要获得高质量的点云数据,用于在现实世界中进行识别模型培训和实地真相登记,需要花费大量时间和精力才能获得高质量的点云数据;为此,提议建立一个用于基于点云的定位识别的新型登记辅助3D域适应网络;引入一个结构认知登记网络,帮助学习几何信息特征和两个点云之间构成的6DoF,但部分重叠。该模型通过GTA-V的合成虚拟LIDAR数据集,通过不同的天气和白天条件以及域适应,通过调整全球特征,在现实世界范围内实施。我们的结果优于3D点识别基准,或者在真实世界的牛津机器人汽车数据集上实现可视化。