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An Automatic Wi-Fi-Based Approach for Extraction of User Places and Their Context

机译:一种基于Wi-Fi的自动方法,用于提取用户位置及其上下文

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With the analysis of various sensor data from the mobile devices, it is possible to extract user situations, so-called user context. This is needed for the development of modern, user-friendly services. Therefore, we developed a simple, nonintrusive, and automatic method based on the Wi-Fi fingerprints and GPS. The method finds user stay points, aggregates them into meaningful stay regions, and assigns them four general user contexts:home,work,transit, andfree time. We evaluated its performance on the real traces of six different users who annotated their contexts over eight days. The method determined the stay mode of the users with accuracy, precision, and recall of above 96%. In combination with the novel approach for aggregation, all regions relevant to the users were determined. Among the tested aggregation schemes, the fingerprint similarity approach worked the best. The context of the determined stay regions was on average accurately inferred in 98% of the time. For the contextshome,work, andfree time, the precision and recall exceeded 86%. The results indicate that the method is robust and can be deployed in various fields where context awareness is desired.
机译:通过分析来自移动设备的各种传感器数据,可以提取用户情况,即所谓的用户上下文。这是开发现代的,用户友好的服务所必需的。因此,我们基于Wi-Fi指纹和GPS开发了一种简单,非侵入性的自动方法。该方法查找用户停留点,将其聚合到有意义的停留区域中,并为它们分配四个常规用户上下文:住所,工作,交通和空闲时间。我们根据六个不同的用户在八天内为上下文添加注释的真实轨迹评估了其性能。该方法确定了用户的停留模式,其准确性,精确度和召回率均在96%以上。结合新颖的聚合方法,确定了与用户相关的所有区域。在测试的聚合方案中,指纹相似性方法效果最好。平均而言,在98%的时间内可以准确推断出所确定的停留区域的背景。对于家庭,工作和空闲时间,准确性和召回率超过86%。结果表明该方法是鲁棒的,可以部署在需要上下文感知的各个领域。

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