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Automatic Recognition of Daily Physical Activities for an Intelligent-Portable Oxygen Concentrator (iPOC)

机译:智能便携式制氧机(iPOC)的日常体育活动的自动识别

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In recent years, new autonomous physiological close-loop controlled (PCLC) medical devices for oxygen delivery are being researched. Most of this PCLC devices are based on the feedback of arterial oxygen saturation, measured using a pulse oximeter. However, pulse oximeters may provide spuriously low or high Sp02 values. In this work, a different approach to adjust automatically oxygen dosing in portable oxygen concentrators (POC) according to the physical activity performed by patients with COPD is presented. To that purpose, the ability of various machine-learning algorithms to recognize four human daily activities from sensor signals collected from a single waist-worn tri-axial accelerometer is evaluated. A set of 56 features was considered and recognition accuracy of up to 91.15% on the four activities of daily living was obtained using a SVM classifier. The associated activity recognition error rate was lower than 5%, ensuring a low percentage of time wrongly assigned to a certain activity. The underlying idea is the hardware implementation of the SVM classifier to control the oxygen flow in intelligent portable oxygen concentrators.
机译:近年来,正在研究用于氧气输送的新型自主生理闭环控制(PCLC)医疗设备。大多数这种PCLC设备基于使用脉搏血氧仪测量的动脉血氧饱和度反馈。但是,脉搏血氧仪可能会提供虚假的Sp02值低或高。在这项工作中,提出了一种不同的方法来根据COPD患者进行的身体活动自动调节便携式制氧机(POC)中的氧气剂量。为此,评估了各种机器学习算法从从单个腰戴式三轴加速度计收集到的传感器信号中识别四项人类日常活动的能力。考虑了一组56个功能,使用SVM分类器对四种日常活动的识别准确率高达91.15%。相关的活动识别错误率低于5%,从而确保将错误地分配给某项活动的时间百分比降低。基本思想是SVM分类器的硬件实现,用于控制智能便携式制氧机中的氧气流量。

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