基于人类活动感知知识的行人航位推算

Yuya Murata, Kei Hiroi, K. Kaji, Nobuo Kawaguchi
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引用次数: 12

摘要

行人航位推算(PDR)是利用智能手机传感器估计室内位置的一种有效技术,本研究旨在提高行人航位推算(PDR)的精度。尽管以前已经提出了各种使用步长和步长数的技术用于PDR,但从智能手机传感器中获得的精度不足。在本研究中,我们定义了人类活动感知知识,并在此基础上提出了提高PDR精度的方法。人类活动感知知识包括行人、环境、活动和终端四种信息。之前的研究分别使用了这类信息;然而,没有研究系统地安排它们在PDR中的使用。我们通过调整通道和楼梯上的步长来提高PDR的准确性,并利用人类活动感知知识修正活动识别误差。为了研究该策略的有效性,我们使用了HASC-IPSC,这是一个室内行人感知语料库。利用人类活动感知知识,活动识别准确率从71.2%提高到91.4%,距离估计误差从27 m左右降低到7 m左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pedestrian dead reckoning based on human activity sensing knowledge
This research addresses improvement of the accuracy of pedestrian dead reckoning (PDR), which is one effective technique to estimate indoor positions using smartphone sensors. Even though various techniques using step lengths and their number have been previously proposed for PDR, insufficient accuracy is gotten from smartphone sensors. In this research, we define human activity sensing knowledge and propose improvements to PDR accuracy based on it. Human activity sensing knowledge consists of four kinds of information: pedestrian, environmental, activity, and terminal. Previous studies separately used these kinds of information; however, no study has systematically arranged them for use in PDR. We improved PDR accuracy by adjusting the step length in passages and on stairs and revised activity recognition error with human activity sensing knowledge. To investigate the effectiveness of that strategy, we used HASC-IPSC, which is an indoor pedestrian sensing corpus. After our investigation, activity recognition accuracy improved from 71.2% to 91.4%, and the distance estimation error was reduced from approximately 27 m to approximately 7 m using human activity sensing knowledge.
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