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Self-calibration of walking speed estimations using smartphone sensors

机译:使用智能手机传感器对步行速度估计值进行自我校准

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Activity recognition for human behavior monitoring is an important research topic in the field of mHealth, especially for aspects of physical activity linked to fitness and disease progress, such as walking and walking speed. Sensors embedded into smartphones recently enabled new opportunities for non invasive activity and walking speed inference. In this paper, we propose a data fusion approach to the problem of physical activity recognition and walking speed estimation using smartphones. Our architecture combines different sensors to take into account practical issues arising in realistic settings, such as variability in phone location and orientation. Additionally, we introduce a novel automatic calibration methodology combining accelerometer and GPS data while walking in unconstrained settings, in order to reduce walking speed estimation error at the individual level. The proposed system was validated in 20 participants while performing sedentary, household, ambulatory and sport activities, in both indoor laboratory and outdoor self-paced settings. We show that by combining accelerometer and gyroscope data, smartphone location can be distinguished between the two most commonly used positions (bag and pocket), regardless of phone orientation (97 % f-score). Location-specific activity recognition models can significantly improve activity recognition performance (p = 0.0010 < α), especially helping in distinguishing activities involving similar motion patterns (91 % f-score overall, improvements between 4% and 11 % for walking and biking activities). Our proposed method to personalize walking speed estimates, by automatically calibrating walking speed estimation models during a short self-paced walk, reduced walking speed estimation error by 8.8% on average (p = 0.0012 < α).
机译:用于人类行为监测的活动识别是移动医疗领域的重要研究课题,尤其是与健身和疾病进展相关的体育活动方面,例如步行和步行速度。嵌入到智能手机中的传感器最近为无创活动和步行速度推断带来了新的机遇。在本文中,我们针对使用智能手机的体育活动识别和步行速度估计问题提出了一种数据融合方法。我们的架构结合了不同的传感器,以考虑实际设置中出现的实际问题,例如电话位置和方向的可变性。此外,我们引入了一种新颖的自动校准方法,该方法结合了加速度计和GPS数据,可在不受约束的环境中行走,以减少各个级别的行走速度估计误差。拟议的系统在室内实验室和室外自定进度环境中进行久坐,家庭,门诊和体育活动的20名参与者中得到了验证。我们显示,通过结合使用加速度计和陀螺仪数据,无论手机方向如何(97%f得分),智能手机的位置都可以在两个最常用的位置(包和口袋)之间进行区分。特定于位置的活动识别模型可以显着提高活动识别性能(p = 0.0010 <α),特别是有助于区分涉及相似运动模式的活动(总体f得分为91%,步行和骑自行车的活动提高4%至11%) 。我们提出的个性化步行速度估算方法,通过在短暂的自定步距步行过程中自动校准步行速度估算模型,可使步行速度估算误差平均降低8.8%(p = 0.0012 <α)。

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