快速和强大的定位使用激光测距仪和wifi数据

Renato Miyagusuku, Yiploon Seow, A. Yamashita, H. Asama
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引用次数: 4

摘要

激光测距仪因其精度高而成为机器人定位中非常受欢迎的传感器。通常,基于这些传感器的定位算法将距离测量值与先前获得的环境地图进行比较。由于许多室内环境是高度对称的(例如,大多数房间具有相同的布局,大多数走廊非常相似),这些系统可能无法识别一个位置与另一个位置,从而导致缓慢的收敛甚至严重的定位问题。为了解决这两个问题,我们提出了一种新的系统,该系统将基于wifi的定位集成到主要使用激光测距仪的典型蒙特卡罗定位算法中。本系统除蒙特卡罗定位算法外,主要由两个模块组成。第一种是利用WiFi数据结合环境的占用网格图,快速可靠地解决全局定位的收敛问题。第二个是使用基于WiFi模型的度量来检测可能的定位失败。为了测试系统的可行性,我们在办公环境中进行了实验。结果表明,该系统收敛速度快,能够以最小的额外计算量检测出定位故障。我们还把所有的数据集和软件都放在网上供社区使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and robust localization using laser rangefinder and wifi data
Laser rangefinders are very popular sensors in robot localization due to their accuracy. Typically, localization algorithms based on these sensors compare range measurements with previously obtained maps of the environment. As many indoor environments are highly symmetrical (e.g., most rooms have the same layout and most corridors are very similar) these systems may fail to recognize one location from another, leading to slow convergence and even severe localization problems. To address these two issues we propose a novel system which incorporates WiFi-based localization into a typical Monte Carlo localization algorithm that primarily uses laser rangefinders. Our system is mainly composed of two modules other than the Monte Carlo localization algorithm. The first uses WiFi data in conjunction with the occupancy grid map of the environment to solve convergence of global localization fast and reliably. The second detects possible localization failures using a metric based on WiFi models. To test the feasibility of our system, we performed experiments in an office environment. Results show that our system allows fast convergence and can detect localization failures with minimum additional computation. We have also made all our datasets and software readily available online for the community.
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