在不受限制的智能手机上进行步行检测和步数计算

Agata Brajdic, R. Harle
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引用次数: 370

摘要

智能手机计步器提供了无处不在的健康监测、环境感知和室内位置跟踪的可能性,通过行人Dead Reckoning (PDR)系统。然而,目前还没有详细了解在典型的、不受限制的智能手机使用中,计步器的效果如何。本文评估了应用于智能手机传感器数据的常见步行检测(WD)和步数计数(SC)算法。使用大型数据集(27人,130次步行,6个智能手机位置)提供最佳算法参数并应用于数据。结果支持使用标准偏差阈值(WD)和窗峰检测(SC),错误率小于3%。在六种不同的放置位置中,只有裤子后口袋被发现显著降低了步数计数性能,导致许多算法计数不足。
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Walk detection and step counting on unconstrained smartphones
Smartphone pedometry offers the possibility of ubiquitous health monitoring, context awareness and indoor location tracking through Pedestrian Dead Reckoning (PDR) systems. However, there is currently no detailed understanding of how well pedometry works when applied to smartphones in typical, unconstrained use. This paper evaluates common walk detection (WD) and step counting (SC) algorithms applied to smartphone sensor data. Using a large dataset (27 people, 130 walks, 6 smartphone placements) optimal algorithm parameters are provided and applied to the data. The results favour the use of standard deviation thresholding (WD) and windowed peak detection (SC) with error rates of less than 3%. Of the six different placements, only the back trouser pocket is found to degrade the step counting performance significantly, resulting in undercounting for many algorithms.
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