Learning sleep stages from radio signals: A conditional adversarial architecture
Author(s)
Jaakkola, Tommi; Bianchi, Matt T.; Katabi, Dina; Yue, Shichao; Zhao, Mingmin
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© Copyright 2017 by the authors(s). We focus on predicting sleep stages from radio measurements without any attached sensors on subjects. We introduce a new predictive model that combines convolutional and recurrent neural networks to extract sleep-specific subject-invariant features from RF signals and capture the temporal progression of sleep. A key innovation underlying our approach is a modified adversarial training regime that discards extraneous information specific to individuals or measurement conditions, while retaining all information relevant to the predictive task. We analyze our game theoretic setup and empirically demonstrate that our model achieves significant improvements over state-of-the-art solutions.
Date issued
2017Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryCitation
Jaakkola, Tommi, Bianchi, Matt T., Katabi, Dina, Yue, Shichao and Zhao, Mingmin. 2017. "Learning sleep stages from radio signals: A conditional adversarial architecture."
Version: Author's final manuscript