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Real-Life Validation of Methods for Detecting Locations, Transition Periods and Travel Modes Using Phone-Based GPS and Activity Tracker Data

机译:使用基于电话的GPS和活动跟踪器数据对位置,过渡期和出行方式进行检测的方法的真实验证

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Insufficient physical activity is a major health concern. Choosing for active transport, such as cycling and walking, can contribute to an increase in activity. Fostering a change in behavior that prefers active transport could start with automated self-monitoring of travel choices. This paper describes an experiment to validate existing algorithms for detecting significant locations, transition periods and travel modes using smartphone-based GPS data and an off-the-shelf activity tracker. A real-life pilot study was conducted to evaluate the feasibility of the approach in the daily life of young adults. A clustering algorithm is used to locate people's important places and an analysis of the sensitivity of the different parameters used in the algorithm is provided. Our findings show that the algorithms can be used to determine whether a user travels actively or passively based on smartphone-based GPS speed data, and that a slightly higher accuracy is achieved when it is combined with activity tracker data.
机译:身体活动不足是主要的健康问题。选择主动出行,例如骑自行车和步行,可以增加活动量。鼓励偏好主动出行的行为改变,可以从自动选择出行方式开始。本文描述了一项实验,该实验可验证现有算法,该算法使用基于智能手机的GPS数据和现成的活动跟踪器来检测重要位置,过渡期和出行方式。进行了一项实际的先导研究,以评估该方法在年轻人的日常生活中的可行性。使用聚类算法来定位人们的重要场所,并分析了算法中使用的不同参数的敏感性。我们的发现表明,该算法可用于基于基于智能手机的GPS速度数据来确定用户是主动旅行还是被动旅行,并且将其与活动跟踪器数据结合使用时,可以获得更高的准确性。

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