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Learning Sleep Stages from Radio Signals: A Conditional Adversarial Architecture

机译:从无线电信号学习睡眠阶段:条件对抗架构

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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.
机译:我们专注于通过无线电测量预测睡眠阶段,而无需在受试者身上安装任何传感器。我们引入了一种新的预测模型,该模型结合了卷积神经网络和循环神经网络,以从RF信号中提取睡眠特定的受试者不变特征,并捕获睡眠的时间进程。我们的方法所基于的一项关键创新是改进的对抗训练机制,该机制可以丢弃特定于个人或测量条件的无关信息,同时保留与预测任务相关的所有信息。我们分析了我们的博弈论设置,并通过经验证明了我们的模型相对于最新的解决方案实现了重大改进。

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