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The Impact of Bathtub Water Temperature on Personal Identification with ECG Signal based on Convolutional Neural Network

机译:基于卷积神经网络的浴缸水温对心电信号个人识别的影响

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This paper explores the impact of bathtub water temperature on personal identification with ECG signal using convolutional neural network. Ten volunteers' ECG records are collected with lead-III at low temperature of bathtub water (38±0.2 ° C in average) and high temperature of bathtub water (42±0.5 °C in average) environments, respectively. Each record is about 5±1 minutes at low temperature and 4±1 minutes at high temperature. In the data preprocessing stage, we denoise the original ECG signal and segment the QRS complex on a beat-by-beat basis. Then, we perform two interpolation calculations based on the QRS segmentation and convert the QRS complex into a binary image one by one. When we use the ECG signals which are collected at low temperature to train and test the CNN model, the identification rate is 82.67%. However, if we use the ECG signal collected at high temperature to test this trained CNN model, the identification rate is only 13.33%. Conversely, when we use the ECG signal collected at high temperature to train and test the CNN model, the identification rate is 85.50%. However, if we use the ECG signal collected at low temperature to test this trained CNN model, the identification rate is only 12.17%. Thus, we notice that the different bathtub water temperature has an important impact on the ECG signal patterns and it is feasible to perform personal identification by convolutional neural network with ECG signal collected during bathing at the same temperature.
机译:本文利用卷积神经网络探讨了浴缸水温对心电图信号个人识别的影响。在低温浴缸水(38±0.2)下,用铅III收集了十名志愿者的心电图记录 ° 平均C)和浴缸水的高温(42±0.5 ° C)。每个记录在低温下约为5±1分钟,在高温下约为4±1分钟。在数据预处理阶段,我们对原始的ECG信号进行降噪,然后逐个节拍地分割QRS复合信号。然后,我们基于QRS分割执行两次插值计算,然后将QRS复数一张一张地转换为二进制图像。当我们使用在低温下收集的ECG信号来训练和测试CNN模型时,识别率为82.67%。但是,如果我们使用高温收集的ECG信号来测试此训练有素的CNN模型,则识别率仅为13.33%。相反,当我们使用在高温下收集到的ECG信号来训练和测试CNN模型时,识别率为85.50%。但是,如果使用低温收集的ECG信号来测试该训练后的CNN模型,则识别率仅为12.17%。因此,我们注意到不同的浴缸水温对ECG信号模式有重要影响,并且通过在相同温度下沐浴时收集的ECG信号通过卷积神经网络进行个人识别是可行的。

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