LiDAR-based SLAM system is admittedly more accurate and stable than others, while its loop closure detection is still an open issue. With the development of 3D semantic segmentation for point cloud, semantic information can be obtained conveniently and steadily, essential for high-level intelligence and conductive to SLAM. In this paper, we present a novel semantic-aided LiDAR SLAM with loop closure based on LOAM, named SA-LOAM, which leverages semantics in odometry as well as loop closure detection. Specifically, we propose a semantic-assisted ICP, including semantically matching, downsampling and plane constraint, and integrates a semantic graph-based place recognition method in our loop closure detection module. Benefitting from semantics, we can improve the localization accuracy, detect loop closures effectively, and construct a global consistent semantic map even in large-scale scenes. Extensive experiments on KITTI and Ford Campus dataset show that our system significantly improves baseline performance, has generalization ability to unseen data and achieves competitive results compared with state-of-the-art methods.
翻译:据认为,基于LiDAR的LiDAR SLAM系统比其他系统更准确、更稳定,而它的循环闭合探测仍然是一个未决问题。随着对点云的3D语义分割的开发,语义信息可以方便和稳定地获得,对于高级情报和导演对SLAM至关重要。在本文中,我们展示了一个新的语义辅助的LiDAR SLAM系统,根据LOAM、名为SA-LOAM的循环闭合,以LOAM、SA-LOAM为基础,以循环闭合为基础,进行循环闭合。具体地说,我们对语义辅助比较方案提出了一种语言辅助性比较方案,包括语义匹配、下标和平面约束,并将基于语义图的位置识别方法纳入我们的循环闭合探测模块。从语义学中受益,我们可以提高本地化准确性,有效检测环环封闭,并构建一个全球一致的语义图,即使在大片场景区也是如此。关于KITTI和Ford校园数据集的广泛实验显示,我们的系统大大改进了基线性性性性性性,能够与州-艺术方法相比,从而获得一般数据并取得竞争性结果结果。