In previous work, a Linear Discriminant (LD) classifier was used to classify sleep and wake states during single-night polysomnography recordings (PSG) of actigraphy, respiratory effort and electrocardiogram (ECG). In order to improve the sleep-wake discrimination performance and to reduce the number of modalities needed for class discrimination, this study incorporated Dynamic Time Warping (DTW) to help discriminate between sleep and wake states based on actigraphy and respiratory effort signal. DTW quantifies signal similarities manifested in the features extracted from the respiratory effort signal. Experiments were conducted on a dataset acquired from nine healthy subjects, using an LD-based classifier. Leave-one- out cross-validation s...
Polysomnography (PSG) is considered the gold standard to assess sleep accurately, but it can be expe...
A method of adapting the boundaries when extracting the spectral features from heart rate variabilit...
Human slow wave sleep (SWS) during bedtime is paramount for energy conservation and memory consolida...
In previous work, a Linear Discriminant (LD) classifier was used to classify sleep and wake states d...
This paper proposes the use of dynamic warping (DW) methods for improving automatic sleep and wake c...
Abstract—This paper proposes the use of dynamic warping (DW) methods for improving automatic sleep a...
This preliminary study investigated the use of cardiac information or more specifically, heart rate ...
Respiratory effort has been widely used for objective analysis of human sleep during bedtime. Severa...
Polysomnography (PSG) is considered the gold standard to assess sleep accurately, but it can be expe...
This paper describes a method to adapt the spectral features extracted from heart rate variability (...
Automatic sleep stage classification with cardiorespiratory signals has attracted increasing attenti...
Highly accurate classification of sleep stages is possible based on EEG signals alone. However, reli...
Abstract—This paper describes a method to adapt the spectral features extracted from heart rate vari...
Polysomnography (PSG) is considered the gold standard to assess sleep accurately, but it can be expe...
A method of adapting the boundaries when extracting the spectral features from heart rate variabilit...
Human slow wave sleep (SWS) during bedtime is paramount for energy conservation and memory consolida...
In previous work, a Linear Discriminant (LD) classifier was used to classify sleep and wake states d...
This paper proposes the use of dynamic warping (DW) methods for improving automatic sleep and wake c...
Abstract—This paper proposes the use of dynamic warping (DW) methods for improving automatic sleep a...
This preliminary study investigated the use of cardiac information or more specifically, heart rate ...
Respiratory effort has been widely used for objective analysis of human sleep during bedtime. Severa...
Polysomnography (PSG) is considered the gold standard to assess sleep accurately, but it can be expe...
This paper describes a method to adapt the spectral features extracted from heart rate variability (...
Automatic sleep stage classification with cardiorespiratory signals has attracted increasing attenti...
Highly accurate classification of sleep stages is possible based on EEG signals alone. However, reli...
Abstract—This paper describes a method to adapt the spectral features extracted from heart rate vari...
Polysomnography (PSG) is considered the gold standard to assess sleep accurately, but it can be expe...
A method of adapting the boundaries when extracting the spectral features from heart rate variabilit...
Human slow wave sleep (SWS) during bedtime is paramount for energy conservation and memory consolida...