The aim of this work is to introduce a new method based on time frequency distribution for classifying the EEG signals. Some parameters are extracted using time-frequency distribution as inputs to a feed-forward backpropagation neural networks (FBNN). The proposed method had better results with 98.25% accuracy compared to previously studied methods such as wavelet transform, entropy, logistic regression and Lyapunov exponent
Time Frequency Signal Analysis and Processing (TFSAP) have been proposed in order to analyse the sig...
This paper proposes new time-frequency features for detecting and classifying epileptic seizure acti...
10 pages, 6 figures.-- PMID: 20217264.This paper describes a new method to identify seizures in ele...
10 pages, 6 figures.-- PMID: 20217264.This paper describes a new method to identify seizures in ele...
International audienceThis work aims at exploring a general framework embedding techniques from clas...
10 pages, 6 figures.-- PMID: 20217264.This paper describes a new method to identify seizures in ele...
Abstract — The purpose of this paper is to investigate a novel algorithm to detect the start and sto...
Today, electroencephalography is used to measure brain activity by creating signals that are viewed ...
The nonstationary and multicomponent nature of newborn EEG seizures tends to increase the complexity...
The analysis of electroencephalogram or EEG plays an important role in diagnosis and detection of br...
4 pages, 3 figures.-- Contributed to: "Engineering the Future of Biomedicine", EMBC2009, 31st Annual...
In this study, we offered a new feature extraction approach called probability distribution based on...
Time Frequency Signal Analysis and Processing (TFSAP) have been proposed in order to analyse the sig...
The analysis of electroencephalogram or EEG plays an important role in diagnosis and detection of br...
This paper presents novel time-frequency (t-f) feature extraction approach for the classification of...
Time Frequency Signal Analysis and Processing (TFSAP) have been proposed in order to analyse the sig...
This paper proposes new time-frequency features for detecting and classifying epileptic seizure acti...
10 pages, 6 figures.-- PMID: 20217264.This paper describes a new method to identify seizures in ele...
10 pages, 6 figures.-- PMID: 20217264.This paper describes a new method to identify seizures in ele...
International audienceThis work aims at exploring a general framework embedding techniques from clas...
10 pages, 6 figures.-- PMID: 20217264.This paper describes a new method to identify seizures in ele...
Abstract — The purpose of this paper is to investigate a novel algorithm to detect the start and sto...
Today, electroencephalography is used to measure brain activity by creating signals that are viewed ...
The nonstationary and multicomponent nature of newborn EEG seizures tends to increase the complexity...
The analysis of electroencephalogram or EEG plays an important role in diagnosis and detection of br...
4 pages, 3 figures.-- Contributed to: "Engineering the Future of Biomedicine", EMBC2009, 31st Annual...
In this study, we offered a new feature extraction approach called probability distribution based on...
Time Frequency Signal Analysis and Processing (TFSAP) have been proposed in order to analyse the sig...
The analysis of electroencephalogram or EEG plays an important role in diagnosis and detection of br...
This paper presents novel time-frequency (t-f) feature extraction approach for the classification of...
Time Frequency Signal Analysis and Processing (TFSAP) have been proposed in order to analyse the sig...
This paper proposes new time-frequency features for detecting and classifying epileptic seizure acti...
10 pages, 6 figures.-- PMID: 20217264.This paper describes a new method to identify seizures in ele...