Time-frequency (TF) based machine learning methodologies can improve the design of classification systems for non-stationary signals. Using selected TF distributions (TFDs), TF feature extraction is performed on multi-channel recordings using channel fusion and feature fusion approaches. Following the findings of previous studies, a TF feature set is defined to include three complementary categories: signal related features, statistical features and image features. Multi-class strategies are then used to improve the classification algorithm robustness to artifacts. The optimal subset of TF features is selected using the wrapper method with sequential forward feature selection (SFFS). In addition, a new proposed measure for TF feature select...
In this research, two different approaches for detecting seizure patterns in newborns' Electroenceph...
This paper proposes new time-frequency features for detecting and classifying epileptic seizure acti...
Previous techniques for seizure detection in newborn are inefti-cient. The main reason for their rel...
This study demonstrates that a time-frequency (TF) image pattern recognition approach offers signifi...
This paper presents new time-frequency (T-F) features to improve the detection and classification of...
This paper considers the general problem of detecting change in non-stationary signals using feature...
This paper presents new time-frequency features for seizure detection in newborn EEG signals. These ...
This paper presents new time-frequency (T-F) features to improve the detection and classification of...
This paper presents new time-frequency (T-F) features to improve the detection and classification of...
Time-frequency (TF) signal analysis and processing techniques provide adequate tools to investigate ...
This article presents a general methodology for processing non-stationary signals for the purpose of...
The NFM is a new method of signal representation that can be used to detecting pseudo-periodicity in...
This paper presents a tutorial review of recent advances in the field of time-frequency (t, f) signa...
This article proposes a new method for newborn seizure detection that uses information extracted fro...
This paper considers the general problem of detecting change in non-stationary signals using feature...
In this research, two different approaches for detecting seizure patterns in newborns' Electroenceph...
This paper proposes new time-frequency features for detecting and classifying epileptic seizure acti...
Previous techniques for seizure detection in newborn are inefti-cient. The main reason for their rel...
This study demonstrates that a time-frequency (TF) image pattern recognition approach offers signifi...
This paper presents new time-frequency (T-F) features to improve the detection and classification of...
This paper considers the general problem of detecting change in non-stationary signals using feature...
This paper presents new time-frequency features for seizure detection in newborn EEG signals. These ...
This paper presents new time-frequency (T-F) features to improve the detection and classification of...
This paper presents new time-frequency (T-F) features to improve the detection and classification of...
Time-frequency (TF) signal analysis and processing techniques provide adequate tools to investigate ...
This article presents a general methodology for processing non-stationary signals for the purpose of...
The NFM is a new method of signal representation that can be used to detecting pseudo-periodicity in...
This paper presents a tutorial review of recent advances in the field of time-frequency (t, f) signa...
This article proposes a new method for newborn seizure detection that uses information extracted fro...
This paper considers the general problem of detecting change in non-stationary signals using feature...
In this research, two different approaches for detecting seizure patterns in newborns' Electroenceph...
This paper proposes new time-frequency features for detecting and classifying epileptic seizure acti...
Previous techniques for seizure detection in newborn are inefti-cient. The main reason for their rel...