移动设备的静态功率:用于室内无线定位的自更新无线地图

Chenshu Wu, Zheng Yang, Chaowei Xiao, Chaofan Yang, Yunhao Liu, M. Liu
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引用次数: 66

摘要

移动计算的激增促使基于wifi的室内定位成为最具吸引力和最有前途的无处不在的应用技术之一。这些技术要完全实用,首先要考虑的是对抗恶劣的室内环境动态,特别是长期部署。尽管基于WiFi指纹的定位研究很多,但无线地图的适应问题还没有得到充分的研究,仍然是一个开放的问题。在这项工作中,我们提出了AcMu,这是一种用于无线室内定位的自动连续无线电地图自更新服务,利用移动设备的静态行为。通过使用一种新颖的轨迹匹配算法精确定位移动设备,我们将它们作为移动参考点,在它们处于静态状态时收集实时RSS样本。有了这些新的参考数据,我们通过学习不同位置之间的RSS依赖关系来调整完整的无线电地图,该关系随着时间的推移相对恒定。6个月20天的大量实验表明,AcMu有效地适应了RSS随时间的变化,并获得了平均误差小于5dB的准确新无线电地图预测。此外,AcMu通过保持最新的无线电地图,将定位精度提高了2倍。
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Static power of mobile devices: Self-updating radio maps for wireless indoor localization
The proliferation of mobile computing has prompted WiFi-based indoor localization to be one of the most attractive and promising techniques for ubiquitous applications. A primary concern for these technologies to be fully practical is to combat harsh indoor environmental dynamics, especially for long-term deployment. Despite numerous research on WiFi fingerprint-based localization, the problem of radio map adaptation has not been sufficiently studied and remains open. In this work, we propose AcMu, an automatic and continuous radio map self-updating service for wireless indoor localization that exploits the static behaviors of mobile devices. By accurately pinpointing mobile devices with a novel trajectory matching algorithm, we employ them as mobile reference points to collect real-time RSS samples when they are static. With these fresh reference data, we adapt the complete radio map by learning an underlying relationship of RSS dependency between different locations, which is expected to be relatively constant over time. Extensive experiments for 20 days across 6 months demonstrate that AcMu effectively accommodates RSS variations over time and derives accurate prediction of fresh radio map with average errors of less than 5dB. Moreover, AcMu provides 2x improvement on localization accuracy by maintaining an up-to-date radio map.
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