IEEE Trans Biomed Circuits Syst. 2009 Apr;3(2):71-8. doi: 10.1109/TBCAS.2008.2008817.
We describe a method for the online classification of sleep/wake states based on cardiorespiratory signals produced by wearable sensors. The method was conceived in view of its applicability to a wearable sleepiness monitoring device. The method uses a fast Fourier transform as the main feature extraction tool and a feedforward artificial neural network as a classifier. We show that when the method is applied to data collected from a single young male adult, the system can correctly classify, on average, 95.4% of unseen data from the same user. When the method is applied to classify data from multiple users with the same age and gender, its accuracy is reduced to 85.3%. However, receiver operating characteristic analysis shows that compared to actigraphy, the proposed method produces a more balanced correct classification of sleep and wake periods. Additionally, by adjusting the classification threshold of the neural classifier, 86.7% of correct classification is obtained.
我们描述了一种基于可穿戴传感器产生的心呼吸信号对睡眠/觉醒状态进行在线分类的方法。该方法旨在应用于可穿戴的瞌睡监测设备。该方法使用快速傅里叶变换作为主要的特征提取工具,以及前馈人工神经网络作为分类器。我们表明,当该方法应用于从单个年轻男性成年人收集的数据时,系统平均可以正确分类同一用户的 95.4%的未见数据。当该方法应用于对具有相同年龄和性别的多个用户的数据进行分类时,其准确性降低到 85.3%。然而,受试者工作特征分析表明,与动作记录仪相比,所提出的方法在睡眠和觉醒期的正确分类上更加平衡。此外,通过调整神经分类器的分类阈值,可以获得 86.7%的正确分类。