Learning sleep stages from radio signals: a conditional adversarial architecture

Pages: 4100 - 4109
Published: Aug 6, 2017
Abstract
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...
Paper Details
Title
Learning sleep stages from radio signals: a conditional adversarial architecture
Published Date
Aug 6, 2017
Pages
4100 - 4109
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