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Adaptive Sleep/Wake Classification Based on Cardiorespiratory Signals for Wearable Devices

机译:基于可穿戴设备的心肺信号的自适应睡眠/唤醒分类

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In this paper we describe a method to classify online sleep/wake states of humans based on cardiorespiratory signals for wearable applications. The method is designed to be embedded in a portable microcontroller device and to cope with the resulting tight power restrictions. The method uses a Fast Fourier Transform as the main feature extraction method and an adaptive feed-forward Artificial Neural Network as a classifier. Results show that when the network is trained on a single user, it can correctly classify on average 95.4% of unseen data from the same user. The accuracy of the method in multi-user conditions is lower (89.4%). This is still comparable to actigraphy methods, but our method classifies wake periods considerably better.
机译:在本文中,我们描述了一种基于用于可穿戴应用的心肺信号的在线睡眠/唤醒状态的方法。该方法被设计成嵌入便携式微控制器装置中并应对所得到的紧密电力限制。该方法使用快速傅里叶变换作为主要特征提取方法和自适应馈送人工神经网络作为分类器。结果表明,当网络在单个用户培训网络时,它可以从同一用户平均正确分类95.4%的未见数据。多用户条件中方法的准确性较低(89.4%)。这仍然与激光方法相当,但我们的方法可以大大提高唤醒时期。

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