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How Hard Am I Training? Using Smart Phones to Estimate Sport Activity Intensity

机译:我训练有多困难?使用智能手机估算运动强度

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Smart phones are increasingly being used to track and recognize different types of activity. However, the task of using smart phones to infer the intensity of sport activities has not received a lot of attention yet. Therefore, we study how off-the-shelf smart phones with built-in accelerometers can be used to estimate the intensity of recreational sport activities. We focus on finding the most appropriate model along with a set of high level acceleration features that could be used to predict heart rate during a sport activity on a resource constrained smart phone device. We collect more than 300 minutes of acceleration and heart rate data from five subjects playing badminton and evaluate four different numeric prediction models using different combinations of acceleration features in terms of correlation between the actual and predicted heart rate and the heart rate estimation error. The evaluations show that linear regression provides good intensity inference accuracy (correlation coefficient: 0.86; mean absolute error: 15.52 beats per minute) and is, considering its low computational demands, the most feasible to be implemented on a smart phone device.
机译:智能手机越来越多地用于跟踪和识别不同类型的活动。但是,使用智能手机推断体育活动强度的任务尚未引起广泛关注。因此,我们研究了如何使用具有内置加速度计的现成智能手机来估计休闲运动的强度。我们专注于找到最合适的模型以及一组高级加速功能,这些功能可用于在资源受限的智能手机设备上进行体育活动期间预测心率。我们从五个打羽毛球的受试者那里收集了300多分钟的加速度和心率数据,并根据实际心率和预测心率与心率估计误差之间的相关性,使用不同的加速度特征组合评估了四个不同的数字预测模型。评估表明,线性回归可提供良好的强度推断精度(相关系数:0.86;平均绝对误差:15.52次/分钟),并且考虑到其较低的计算要求,因此最可行的方法是在智能电话设备上实施。

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