Karlen, WalterMattiussi, ClaudioFloreano, Dario2007-07-022007-07-022007-07-02200710.1109/BIOCAS.2007.4463344https://infoscience.epfl.ch/handle/20.500.14299/9391WOS:000255659700051We 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 and weight restrictions. The method uses a Fast Fourier Transform for feature extraction 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, but still comparable to actigraphy methods.Biomedical Signal AnalysisWearable ComputingSleep and Wake ClassificationElectrocardiographyRespiratoryEffortNeural ClassifierSoft RoboticsWearable RoboticsHuman Robot InteractionAdaptive Sleep/Wake Classification Based on Cardiorespiratory Signals for Wearable Devicestext::conference output::conference proceedings::conference paper