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Efficient Location Sensing in Longitudinal Cohort Studies

机译:纵向队列研究中的高效位置感应

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A longitudinal cohort study is a popular research method to observe a group of people over a prolonged period of time, e.g., to learn about their health, wellness, and social habits. Smartphones have become a very popular tool to perform such studies at a large scale. Location is an essential form of sensor data that can not only be used to monitor users' mobility and social interaction patterns, but also to identify places of personal significance, i.e., places where a user spends a significant amount of time, such as a user's home, workplace, and preferred social gathering places. However, continuously tracking a user's location can have significant impacts on the battery lifetime of a smartphone. Therefore, instead of frequent period location sensing, this paper identifies smartphone events that can be used to trigger location sensing at a much lower rate (and therefore more energy-efficiently), while still providing accurate location data. In this work, we demonstrate that this approach allows us to determine a user's significant places with an accuracy of 85%, while saving over 60% in computational and energy overheads.
机译:纵向队列研究是一种流行的研究方法,可以长时间观察一组人,例如了解他们的健康,保健和社交习惯。智能手机已成为一种大规模进行此类研究的非常流行的工具。位置是传感器数据的一种基本形式,不仅可以用于监视用户的移动性和社交互动方式,还可以识别具有个人意义的地点,即用户花费大量时间的地点,例如用户的家庭,工作场所和首选社交聚会场所。但是,连续跟踪用户的位置可能会对智能手机的电池寿命产生重大影响。因此,本文将识别智能手机事件,而不是进行频繁的位置感测,该事件可用于以低得多的速率触发位置感测(从而更加节能),同时仍提供准确的位置数据。在这项工作中,我们证明了这种方法使我们能够以85%的精度确定用户的重要位置,同时节省了60%以上的计算和能源开销。

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