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The Minimum Sampling Rate and Sampling Duration When Applying Geolocation Data Technology to Human Activity Monitoring

机译:将地理位置数据技术应用于人类活动监测时的最小采样率和采样持续时间

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The availability of geolocation sensors embedded in smartphones introduces opportunities to monitor behaviours of individuals. However, sensing geolocation at high sampling rates can affect the battery life of smartphones. In this study, we sought to explore the minimum sampling rate of geolocation data required to accurately recognise out-of-home activities. We collected geolocation data from 19 volunteers sampled every 10 s for 8 non-consecutive days on average. These volunteers were also instructed to complete a paper-based activity diary to record all activities during each data collection day. For finding the minimum sampling rate, we derived datasets at lower sampling rates by down sampling the original data. A semantic analysis was applied using a previously published activity recognition algorithm. The impact of the sampling rates on accuracy of the algorithm was measured through the F_1 score. The best F_1 score was found at sampling intervals of 2 min and it did not drop substantially until the sampling intervals increased to 10 min. Our study proves the feasibility of monitoring activities at low sampling rates using smartphone-based geolocation sensing.
机译:嵌入在智能手机中的地理位置传感器的可用性为监视个人行为提供了机会。但是,以高采样率感应地理位置会影响智能手机的电池寿命。在这项研究中,我们试图探索精确识别户外活动所需的最小地理位置数据采样率。我们平均每10 s收集了19位志愿者的地理位置数据,这些志愿者每10 s平均采样8天。还指示这些志愿者完成纸质活动日记,以记录每个数据收集日的所有活动。为了找到最小采样率,我们通过对原始数据进行下采样来以较低采样率导出数据集。使用先前发布的活动识别算法应用了语义分析。通过F_1分数测量采样率对算法准确性的影响。最佳的F_1分数以2分钟的采样间隔发现,并且直到采样间隔增加到10分钟才显着下降。我们的研究证明了使用基于智能手机的地理位置感应以低采样率监视活动的可行性。

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