不同数据关联算法的角点SLAM遮挡避免

Rui-Jun Yan, Jing Wu, Ji Yeong Lee
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引用次数: 1

摘要

提出了采用不同数据关联算法的基于拐角的同步定位与映射(SLAM)中的遮挡避免方法。如果物体的一部分被遮挡,则提取多余或错误的特征。角的选择是由两个相邻线段相交,并选择一些特殊线段的端点。当两条线段距离足够远时,将这两条线段最近的两个端点作为候选角。然后从两个候选点中选择一个作为激光束距离较短的最终角。但是,如果这个角的线段很短,则忽略这个角,因为它可能只是具有复杂表面的物体的一部分,例如柱。提取这些角后,将其用于移动机器人状态和先前地标的估计。为了获得更好的匹配结果,采用了两种数据关联算法来构建新特征与存储的地图特征之间的对应关系。室内环境下的实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Occlusion avoidance in corners-based SLAM with different data association algorithms
This paper proposes the occlusion avoidance method in comers-based simultaneous localization and mapping (SLAM) with different data association algorithms. The redundant or wrong features are extracted if part of the object is occluded. The comers are chosen by intersecting two adjacent line segments and selecting the end-points of some special line segment. When two segments are far enough, the nearest two end-points of these two lines are considered as candidate comers. Then one of two candidates is stored as final comer with shorter distance of laser beam. However, if the line segment with this corner is very short, this comer is ignored because it may be just part of the object with complex surface, such as column. After extracting theses comers, they have been used in estimating the state of mobile robot and previous landmarks. To have a better matching result, two data association algorithms are applied in constructing the correspondence between new features and stored map features. The experiment result in indoor environment shows the validity of proposed method.
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