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Using GPS to learn significant locations and predict movement across multiple users

机译:使用GPS学习重要位置并预测多个用户之间的移动

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摘要

Wearable computers have the potential to act as intelligent agents in everyday life and to assist the user in a variety of tasks, using context to determine how to act. Location is the most common form of context used by these agents to determine the user's task. However, another potential use of location context is the creation of a predictive model of the user's future movements. We present a system that automatically clusters GPS data taken over an extended period of time into meaningful locations at multiple scales. These locations are then incorporated into a Markov model that can be consulted for use with a variety of applications in both single-user and collaborative scenarios.
机译:穿戴式计算机有潜力在日常生活中充当智能代理,并通过使用上下文确定如何采取行动来协助用户执行各种任务。位置是这些代理用来确定用户任务的最常见的上下文形式。但是,位置上下文的另一个潜在用途是创建用户未来运动的预测模型。我们提出了一种系统,该系统可将长时间内获取的GPS数据自动聚类到多个比例的有意义位置。然后将这些位置合并到Markov模型中,可以在单用户和协作方案中参考这些位置以用于各种应用程序。

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