论文标题

制图师_glass:2D Graph SLAM使用LIDAR用于玻璃环境

Cartographer_glass: 2D Graph SLAM Framework using LiDAR for Glass Environments

论文作者

Weerakoon, Lasitha, Herr, Gurtajbir Singh, Blunt, Jasmine, Yu, Miao, Chopra, Nikhil

论文摘要

我们研究了用于检测并在基于优化的同时定位和映射(SLAM)算法中检测并包括玻璃对象的算法。当LiDar数据是主要的外部感官感觉输入时,玻璃对象未正确注册。当入射光主要通过玻璃物体或远离源头,导致玻璃表面的范围测量不准确,这发生在这一过程中。因此,本地化和映射性能受到影响,从而在这种环境中导致导航不可靠。基于优化的SLAM解决方案,也称为图形大满贯,被广泛认为是艺术的状态。在本文中,我们利用一种简单且廉价的玻璃检测方案来检测玻璃对象,并提出该方法将确定的对象纳入由这种算法(Google制图师)维护的占用网格。我们开发了用于实现上述目的的局部(子束级)和全局算法,并将我们方法产生的地图与利用基于粒子滤波器的SLAM的现有算法产生的地图进行比较。

We study algorithms for detecting and including glass objects in an optimization-based Simultaneous Localization and Mapping (SLAM) algorithm in this work. When LiDAR data is the primary exteroceptive sensory input, glass objects are not correctly registered. This occurs as the incident light primarily passes through the glass objects or reflects away from the source, resulting in inaccurate range measurements for glass surfaces. Consequently, the localization and mapping performance is impacted, thereby rendering navigation in such environments unreliable. Optimization-based SLAM solutions, which are also referred to as Graph SLAM, are widely regarded as state of the art. In this paper, we utilize a simple and computationally inexpensive glass detection scheme for detecting glass objects and present the methodology to incorporate the identified objects into the occupancy grid maintained by such an algorithm (Google Cartographer). We develop both local (submap level) and global algorithms for achieving the objective mentioned above and compare the maps produced by our method with those produced by an existing algorithm that utilizes particle filter based SLAM.

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