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A Light-and-Fast SLAM Algorithm for Robots in Indoor Environments Using Line Segment Map

机译:使用线段图的室内环境中机器人的快速SLAM算法

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Simultaneous Localization and Mapping (SLAM) is an important technique for robotic system navigation. Due to the high complexity of the algorithm, SLAM usually needs long computational time or large amount of memory to achieve accurate results. In this paper, we present a lightweight Rao-Blackwellized particle filter- (RBPF-) based SLAM algorithm for indoor environments, which uses line segments extracted from the laser range finder as the fundamental map structure so as to reduce the memory usage. Since most major structures of indoor environments are usually orthogonal to each other, we can also efficiently increase the accuracy and reduce the complexity of our algorithm by exploiting this orthogonal property of line segments, that is, we treat line segments that are parallel or perpendicular to each other in a special way when calculating the importance weight of each particle. Experimental results shows that our work is capable of drawing maps in complex indoor environments, needing only very low amount of memory and much less computational time as compared to other grid map-based RBPF SLAM algorithms.
机译:同步定位和映射(SLAM)是机器人系统导航的一项重要技术。由于算法的高度复杂性,SLAM通常需要较长的计算时间或大量的内存才能获得准确的结果。在本文中,我们提出了一种针对室内环境的基于Rao-Blackwellized粒子滤波器(RBPF-)的轻量型SLAM算法,该算法使用从激光测距仪提取的线段作为基本地图结构,以减少内存使用。由于室内环境的大多数主要结构通常相互正交,因此我们也可以通过利用线段的这种正交特性来有效地提高精度并降低算法的复杂性,即我们对待与之平行或垂直的线段进行处理。在计算每个粒子的重要权重时,它们会以一种特殊的方式相互关联。实验结果表明,与其他基于网格图的RBPF SLAM算法相比,我们的工作能够在复杂的室内环境中绘制地图,仅需要非常少的内存和更少的计算时间。

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