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引用次数: 0

摘要

自主移动机器人为扩展我们对太阳系或海洋中偏远地区的了解提供了前景。它们还具有改善日常生活的潜力,对各种环境的适应能力不断增强。关键的技术要素之一是导航未知和非合作环境的能力。在过去十年中,出现了一系列针对同时定位和绘图(SLAM)问题的解决方案。一个经常被忽视的因素是机器人的身体与环境相互作用。本文提出了一种利用这些信息并使用视觉和非视觉相关性来生成精确的局部地图段的方法。在此基础上,提出了一种将基于粒子滤波的局部地图段和基于约束图的全局姿态优化结合为单一连贯地图表示的方法。在腿/轮混合移动机器人上对该方法进行了评估,并将结果地图与商用激光扫描仪生成的高分辨率环境模型进行了比较。
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Map segmentation based SLAM using embodied data
Autonomous mobile robots offer the prospect of extending our knowledge of remote places in the solar system or in the ocean. They also have the potential to improve everyday life with ever increasing adaptability to a large variety of environments. One of the key technological elements is the ability to navigate unknown and uncooperative environments. A range of solutions for the simultaneous localisation and mapping (SLAM) problem have emerged in the last decade. One factor which is often neglected is the fact that the robot has a body which interacts with the environment. In this paper a method is presented, which utilises this information and uses visual and non-visual correlations to generate accurate local map segments. Further, a method is presented to combine particle filter based local map segments and constraint graph based global pose optimization to a single coherent map representation. The method is evaluated on a Leg/Wheel hybrid mobile robot and the resulting maps compared against high resolution environment models generated with a commercial laser scanner.
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