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Online, data-driven detection of human position during Kegel exercising

机译:在线,数据驱动检测人类位置在Kegel运动期间

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This paper proposes an online, data-driven method to detect in which position (lying or standing) a women is performing Kegel exercises from measurements collected with a vaginal pressure sensor array. Pressure data has been collected with the vaginal pressure sensor from women performing Kegel exercises by playing a dedicated mobile app, which is controlled by contracting their pelvic floor muscles. Depending on their position while playing (lying or standing), the recorded pressure patterns exhibit different characteristics in terms of intensity, location and width of the pressure peak, which may be used to detect the human position. For this, the recorded data is filtered, opportune features are extracted and a suitable classifier is trained to distinguish the two positions. The results show that the human position can be accurately detected online when using individual models for each patient (in our experiments, up to 1% of false positives and 4% false negatives), whereas the detection capabilities might decrease drastically when considering the same classifier for another women (e.g., up to 95% of false positives).
机译:本文提出了一种在线,数据驱动的方法来检测妇女从用阴道压力传感器阵列收集的测量执行Kegel练习的位置(撒谎或站立)。通过播放专用移动应用程序,使用妇女的阴道压力传感器收集了压力数据,该妇女进行了专用的移动应用程序,该应用是通过收缩其骨盆底肌肉来控制的。根据它们的位置(躺着或站立),记录的压力模式在压力峰的强度,位置和宽度方面表现出不同的特征,该压力峰值可以用于检测人体位置。为此,过滤记录的数据,提取了适当的特征,并且训练了合适的分类器以区分两个位置。结果表明,在每位患者的各个模型(在我们的实验中,高达1%的误报和4%的假阴性)时,可以在线准确地检测人体位置,而在考虑相同的分类器时,检测能力可能会急剧下降对于另一个女性(例如,高达95%的误报)。

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