睡眠阶段分类中的深度学习

Mohamed H. Al-Meer, M. Mamun
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引用次数: 1

摘要

本文提出了一种深度前馈神经网络分类器,该分类器利用单个电腭图通道(Fpz-Cz)的原始数据对睡眠阶段进行自动分类。没有从数据中提取任何特征,网络可以将睡眠分为清醒、n1、N2、N3、N4和快速眼动五个阶段。该网络有三层,以l-s个epoch作为输入进行分类,不需要信号预处理,也不需要特征提取。我们使用DeepLearning4J来训练和评估我们的系统,DeepLearning4J是一个免费的Java框架,用于从PhysioNet的Polysomnography Sleep数据库中获取测试数据。在受限环境下的精度达到了0.99。
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Deep Learning in Classifying Sleep Stages
This paper presents a deep feed-forward neural network classifier to automatically classify the stages of sleep using raw data taken from a single electropalatogram channel (Fpz-Cz). No features are extracted at all from the data, and the network can classify the five sleep stages: waking, Nl, N2, N3, N4, and rapid eye movement. The network has three layers, takes as an input a l-s epochs to be classified, and requires no signal pre-processing nor feature extraction. We trained and evaluated our system using DeepLearning4J, the free Java framework for test data taken from PhysioNet’s Polysomnography Sleep database. An accuracy of 0.99 within a constrained environment has been reached.
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