This paper proposes a novel framework for automatically capturing the time-frequency nature of electroencephalogram (EEG) signals of human sleep based on the authoritative sleep medicine guidance. The framework consists of two parts: the first part extracts informative features by partitioning the input EEG spectrograms into a sequence of time-frequency patches. The second part is constituted by an attention-based architecture to efficiently search for the correlation between partitioned time-frequency patches and defining factors of sleep stages in parallel. The proposed pipeline is validated on the Sleep Heart Health Study dataset with new state-of-the-art results for the stages wake, N2, and N3, obtaining respective F1 scores of 0.93, 0....
Classic visual sleep stage scoring is based on electroencephalogram (EEG) frequency band analysis of...
For sleep classification, automatic electroencephalogram (EEG) interpretation techniques are of inte...
Abstract-This study aimed to develop an automatic algorithm to detect the activation phases (A phase...
The most important part of sleep quality assessment is the automatic classification of sleep stages....
The conventional approach to the analysis of human sleep uses a set of pre-defined rules to allocate...
Sleep-related diseases seriously affect the life quality of patients. Sleep stage classification (or...
We present a method for the detection of sleep stages using the EEG (electroencephalogram). The meth...
Objectives: We have developed a system to perform automated sleep staging. The system is a re implem...
In clinical environments sleep stagings are an important diagnostic tool. Currently, sleep stagings ...
Feature extraction from physiological signals of EEG (electroencephalogram) is an essential part for...
We present a method for the detection of sleep stages using the EEG (electroencephalogram). The meth...
Sleep staging is considered as an effective indicator for auxiliary diagnosis of sleep diseases and ...
Objective Limitations of the manual scoring of polysomnograms, which include data from electroenc...
Highly accurate classification of sleep stages is possible based on EEG signals alone. However, reli...
The recommendations for identifying sleep stages based on the interpretation of electrophysiological...
Classic visual sleep stage scoring is based on electroencephalogram (EEG) frequency band analysis of...
For sleep classification, automatic electroencephalogram (EEG) interpretation techniques are of inte...
Abstract-This study aimed to develop an automatic algorithm to detect the activation phases (A phase...
The most important part of sleep quality assessment is the automatic classification of sleep stages....
The conventional approach to the analysis of human sleep uses a set of pre-defined rules to allocate...
Sleep-related diseases seriously affect the life quality of patients. Sleep stage classification (or...
We present a method for the detection of sleep stages using the EEG (electroencephalogram). The meth...
Objectives: We have developed a system to perform automated sleep staging. The system is a re implem...
In clinical environments sleep stagings are an important diagnostic tool. Currently, sleep stagings ...
Feature extraction from physiological signals of EEG (electroencephalogram) is an essential part for...
We present a method for the detection of sleep stages using the EEG (electroencephalogram). The meth...
Sleep staging is considered as an effective indicator for auxiliary diagnosis of sleep diseases and ...
Objective Limitations of the manual scoring of polysomnograms, which include data from electroenc...
Highly accurate classification of sleep stages is possible based on EEG signals alone. However, reli...
The recommendations for identifying sleep stages based on the interpretation of electrophysiological...
Classic visual sleep stage scoring is based on electroencephalogram (EEG) frequency band analysis of...
For sleep classification, automatic electroencephalogram (EEG) interpretation techniques are of inte...
Abstract-This study aimed to develop an automatic algorithm to detect the activation phases (A phase...