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A Study on User Recognition Using the Generated Synthetic Electrocardiogram Signal

机译:使用生成的合成心电图信号进行用户识别研究

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摘要

Electrocardiogram (ECG) signals are time series data that are acquired by time change. A problem with these signals is that comparison data that have the same size as the registration data must be acquired every time. A network model of an auxiliary classifier based generative adversarial neural network that is capable of generating synthetic ECG signals is proposed to resolve the data size inconsistency problem. After constructing comparison data with various combinations of the real and generated synthetic ECG signal cycles, a user recognition experiment was performed by applying them to an ensemble network of parallel structure. Recognition performance of 98.5% was demonstrated when five cycles of real ECG signals were used. Moreover, 98.7% and 97% accuracies were provided when the first cycle of synthetic ECG signals and the fourth cycle of real ECG signals were repetitively used as the last cycle, respectively, in addition to the four cycles of real ECG. When two cycles of synthetic ECG signals were used with three cycles of real ECG signals, 97.2% accuracy was shown. When the last third cycle was repeatedly used with the three cycles of real ECG signals, the accuracy was 96%, which was 1.2% lower than the performance obtained while using the synthetic ECG. Therefore, even if the size of the registration data and that of the comparison data are not consistent, the generated synthetic ECG signals can be applied to a real life environment, because a high recognition performance is demonstrated when they are applied to an ensemble network of parallel structure.
机译:心电图(ECG)信号是随时间变化获取的时间序列数据。这些信号的问题是每次必须获取具有与注册数据相同大小的比较数据。提出了一种能够生成合成ECG信号的基于辅助分类器的生成对抗神经网络的网络模型,以解决数据大小不一致问题。在用真实和生成的合成ECG信号周期的各种组合构建比较数据之后,通过将它们应用于并联结构的集合网络来执行用户识别实验。当使用五个真实的ECG信号时,识别性能为98.5%。此外,除了用于真实心电图的四个周期之外,当综合的ECG信号和第四个真实ECG信号的第四个周期分别被重复使用98.7%和97%的精度,还提供了重复使用的。当两个合成的ECG信号与真实ECG信号的三个周期一起使用时,显示了97.2%的精度。当最后第三个周期与真实ECG信号的三个周期一起使用时,精度为96%,比使用合成心电图的同时获得的性能低1.2%。因此,即使登记数据的大小和比较数据的大小不一致,所生成的合成ECG信号也可以应用于真实生活环境,因为当它们应用于集合网络时,可以对高识别性能进行说明平行结构。

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