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Deep Learning Based Heart Rate Estimation Using Smart Shoes Sensor

机译:基于深度学习的心率估计用智能鞋传感器

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Although heart rate is an important biomarker of the physical condition at active states of users, it is still difficult to be measured due to an ambient noise and movements. There have been several approaches proposed to obtain stable measurements in an active condition. However, these methods still need direct contact to users, and thus additional equipment to keep the contact are requested, resulting in inconvenience of its usage. This paper proposes a method to estimate the heart rate of the user using activity information from smart shoes sensors, which is relatively easy and robust to be recorded. For the accurate estimation of the heart rate, a new design of deep neural networks is proposed. The architecture extracts features of time-sequential patterns of sensor data with implementing CNN and LSTM model together. The model was validated with a ‘Leave-OneOut Cross-Validation method’. The results of the experiments are 10.21 ± 3.31 RMSE, 8.31 ± 2.81 MAE and 0.91 ± 0.09 correlation coefficient (Pearson) for the estimation of heart rate from smart shoes sensor data.
机译:虽然心率是用户的活性状态的物理状况的重要生物标志物,但由于环境噪音和运动,仍然难以测量。已经提出了几种方法以在有效条件下获得稳定的测量。但是,这些方法仍然需要向用户直接接触,因此请求额外的设备以保持联系,从而导致其使用不便。本文提出了一种使用来自智能鞋传感器的活动信息来估计用户的心率的方法,这些方法是相对容易和稳健的才能记录。为了准确估计心率,提出了一种深神经网络的新设计。该体系结构提取使用CNN和LSTM模型的传感器数据的时间顺序模式的特征。该模型被验证为“休假 - OneOut交叉验证方法”。实验结果为10.21±3.31 RMSE,8.31±2.81 mae和0.91±0.09个相关系数(Pearson),用于估算智能鞋传感器数据的心率。

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