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Semantic Data Association for Planar Features in Outdoor 6D-SLAM Using LiDAR

机译:使用LiDAR的室外6D-SLAM平面特征的语义数据关联

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Simultaneous Localization and Mapping (SLAM) is a fundamental problem of the autonomous systems in GPS (Global Navigation System) denied environments. The traditional probabilistic SLAM methods uses point features as landmarks and hold all the feature positions in their state vector in addition to the robot pose. The bottleneck of the point-feature based SLAM methods is the data association problem, which are mostly based on a statistical measure. The data association performance is very critical for a robust SLAM method since all the filtering strategies are applied after a known correspondence. For point-features, two different but very close landmarks in the same scene might be confused while giving the correspondence decision when their positions and error covariance matrix are solely taking into account. Instead of using the point features, planar features can be considered as an alternative landmark model in the SLAM problem to be able to provide a more consistent data association. Planes contain rich information for the solution of the data association problem and can be distinguished easily with respect to point features. In addition, planar maps are very compact since an environment has only very limited number of planar structures. The planar features does not have to be large structures like building wall or roofs; the small plane segments can also be used as landmarks like billboards, traffic posts and some part of the bridges in urban areas. In this paper, a probabilistic plane-feature extraction method from 3D-LiDAR data and the data association based on the extracted semantic information of the planar features is introduced. The experimental results show that the semantic data association provides very satisfactory result in outdoor 6D-SLAM.
机译:同步定位和地图绘制(SLAM)是GPS(全球导航系统)被拒绝的环境中自治系统的基本问题。传统的概率SLAM方法使用点特征作为界标,并且除了机器人姿势外,还将所有特征位置保持在其状态向量中。基于点特征的SLAM方法的瓶颈是数据关联问题,该问题主要基于统计量度。数据关联性能对于鲁棒的SLAM方法至关重要,因为所有过滤策略都在已知对应关系之后应用。对于点特征,如果仅考虑其位置和误差协方差矩阵,则在给出对应决策时,可能会混淆同一场景中的两个不同但非常接近的地标。代替使用点要素,可以将平面要素视为SLAM问题中的替代地标模型,以便能够提供更一致的数据关联。平面包含用于解决数据关联问题的丰富信息,并且可以相对于点特征轻松区分。另外,由于环境仅具有非常有限数量的平面结构,所以平面图非常紧凑。平面特征不必是大型结构,例如建筑物的墙壁或屋顶。小平面段也可以用作地标,例如广告牌,交通哨所和市区桥梁的某些部分。本文介绍了一种基于3D-LiDAR数据的概率平面特征提取方法和基于提取的平面特征语义信息的数据关联。实验结果表明,语义数据关联在室外6D-SLAM中提供了非常令人满意的结果。

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