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Transfer Learning Convolutional Neural Network for Sleep Stage Classification Using Two-stage Data Fusion Framework
2020
IEEE Access
The most important part of sleep quality assessment is the classification of sleep stages, which helps to diagnose sleep-related disease. In the traditional sleep staging method, subjects have to spend a night in the sleep clinic for recording polysomnogram. Sleep expert classifies the sleep stages by monitoring the signals, which is time consuming and frustrating task and can be affected by human error. New studies propose fully automated techniques for classifying sleep stages that makes
doi:10.1109/access.2020.3027289
fatcat:yfv7ccl3krdwpnlokwqdb4how4