首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >Fusion of the SLAM with Wi-Fi-Based Positioning Methods for Mobile Robot-Based Learning Data Collection Localization and Tracking in Indoor Spaces
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Fusion of the SLAM with Wi-Fi-Based Positioning Methods for Mobile Robot-Based Learning Data Collection Localization and Tracking in Indoor Spaces

机译:利用基于Wi-Fi的定位方法的基于Wi-Fi的定位方法融合用于移动机器人的学习数据收集本地化和在室内空间中跟踪

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摘要

The ability to estimate the current locations of mobile robots that move in a limited workspace and perform tasks is fundamental in robotic services. However, even if the robot is given a map of the workspace, it is not easy to quickly and accurately determine its own location by relying only on dead reckoning. In this paper, a new signal fluctuation matrix and a tracking algorithm that combines the extended Viterbi algorithm and odometer information are proposed to improve the accuracy of robot location tracking. In addition, to collect high-quality learning data, we introduce a fusion method called simultaneous localization and mapping and Wi-Fi fingerprinting techniques. The results of the experiments conducted in an office environment confirm that the proposed methods provide accurate and efficient tracking results. We hope that the proposed methods will also be applied to different fields, such as the Internet of Things, to support real-life activities.
机译:估计在有限的工作空间中移动的移动机器人的当前位置的能力并执行任务是机器人服务的基础。然而,即使机器人被赋予工作空间的地图,它也不容易通过仅依赖于死者来快速准确地确定自己的位置。在本文中,提出了一种新的信号波动矩阵和结合扩展维特比算法和内径计信息的跟踪算法,以提高机器人位置跟踪的准确性。此外,要收集高质量的学习数据,我们介绍了一种称为同时定位和映射和Wi-Fi指纹技术的融合方法。在办公环境中进行的实验结果证实,该方法提供了准确有效的跟踪结果。我们希望拟议的方法也将应用于不同领域,例如物联网,支持现实生活活动。

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