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Smartphone-Based Activity Recognition in a Pedestrian Navigation Context

机译:基于智能手机的活动识别在行人导航上下文中

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摘要

In smartphone-based pedestrian navigation systems, detailed knowledge about user activity and device placement is a key information. Landmarks such as staircases or elevators can help the system in determining the user position when located inside buildings, and navigation instructions can be adapted to the current context in order to provide more meaningful assistance. Typically, most human activity recognition (HAR) approaches distinguish between general activities such as walking, standing or sitting. In this work, we investigate more specific activities that are tailored towards the use-case of pedestrian navigation, including different kinds of stationary and locomotion behavior. We first collect a dataset of 28 combinations of device placements and activities, in total consisting of over 6 h of data from three sensors. We then use LSTM-based machine learning (ML) methods to successfully train hierarchical classifiers that can distinguish between these placements and activities. Test results show that the accuracy of device placement classification (97.2%) is on par with a state-of-the-art benchmark in this dataset while being less resource-intensive on mobile devices. Activity recognition performance highly depends on the classification task and ranges from 62.6% to 98.7%, once again performing close to the benchmark. Finally, we demonstrate in a case study how to apply the hierarchical classifiers to experimental and naturalistic datasets in order to analyze activity patterns during the course of a typical navigation session and to investigate the correlation between user activity and device placement, thereby gaining insights into real-world navigation behavior.
机译:在基于智能手机的步行导航系统中,有关用户活动和设备放置详细知识是密钥信息。标如楼梯或电梯可以帮助系统在确定位于建筑物内时,和导航指令可以提供更有意义的援助适应于当前上下文中的用户位置。通常,大多数人的活动识别(HAR)接近一般活动如行走,站立或坐着之间进行区分。在这项工作中,我们调查仅仅是导致行人导航的使用情况,包括不同种类的静止和运动行为量身定制的具体活动。我们首先收集的设备展示位置和活动的组合28的数据集,在从三个传感器组成的数据的在6小时的总。然后,我们使用基于LSTM机器学习(ML)方法,以成功培养层次的分类可在这些展示位置和活动区别开来。试验结果表明,装置放置分类(97.2%)的精度看齐国家的最先进的基准在此数据集而被较少资源密集在移动设备上。活动识别性能在很大程度上取决于从62.6%的分类任务和范围,以98.7%,再次执行接近基准。最后,我们展示了一个案例研究如何将一个典型的导航会话过程中应用分层分类实验和自然的数据集,以分析活动模式,并调查用户活动和设备位置之间的相关性,从而获得洞察力转化为现实-world导航行为。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2021(21),9
  • 年度 2021
  • 页码 3243
  • 总页数 20
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:活动识别;智能手机;行人导航;自然主义数据;机器学习;

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