This paper aims to improve the performance of a proposed electroencephalogram (EEG) spike detection technique. This technique accentuates the signature of spikes in the time domain signal using a nonlinear energy operator by amplifying high frequency activities such as spikes. The resulted signal is convolved with a smoothing window to reduce the effect of noise. Then, values of the resulted signal higher than a threshold value are considered as spikes. The instantaneous nature of the technique and its very low computation make it an ideal tool for spike detection. In this approach selection of the threshold value is crucial for the accuracy of the technique. This paper is aimed at improving the technique using a new approach for the thresh...
International audienceEpilepsy is one of the diseases that are more subject to consultation in neuro...
The algorithm of automatic EEG spike detection and its implementation is described in this article. ...
Implementation and Improvements on Morphological Filter Based EEG Spike Detection Algorithm The main...
This paper presents a new time frequency based spike detection technique. As spikes are broadband ev...
This paper presents a new method for detecting EEG spikes. The method is based on the time–frequency...
This paper presents an improved time-frequency (TF) based technique for newborn EEG seizure detectio...
Paroxysmal events such as spikes in the newborn EEG are key indicators of central nervous system (CN...
This paper investigates the performance of time– frequency based EEG spike detection techniques. The...
International audienceEpilepsy is a common neurological condition which affects the central nervous ...
This paper proposes a new time-frequency (TF) based approach for detecting spikes in newborns' EEG s...
A technique proposed for the automatic detection of spikes in electroencephalograms (EEG). A multi-r...
This work presents convolutional neural network (CNN) based methodology for electroencephalogram (EE...
To report an innovative spike detection algorithm that tailors its detection to the patient. Interic...
In this study, we introduce a two-stage procedure based on support vector machines for the automatic...
Automatic spike detection from epileptic EEG data is a pressing clinical problem in terms of locall...
International audienceEpilepsy is one of the diseases that are more subject to consultation in neuro...
The algorithm of automatic EEG spike detection and its implementation is described in this article. ...
Implementation and Improvements on Morphological Filter Based EEG Spike Detection Algorithm The main...
This paper presents a new time frequency based spike detection technique. As spikes are broadband ev...
This paper presents a new method for detecting EEG spikes. The method is based on the time–frequency...
This paper presents an improved time-frequency (TF) based technique for newborn EEG seizure detectio...
Paroxysmal events such as spikes in the newborn EEG are key indicators of central nervous system (CN...
This paper investigates the performance of time– frequency based EEG spike detection techniques. The...
International audienceEpilepsy is a common neurological condition which affects the central nervous ...
This paper proposes a new time-frequency (TF) based approach for detecting spikes in newborns' EEG s...
A technique proposed for the automatic detection of spikes in electroencephalograms (EEG). A multi-r...
This work presents convolutional neural network (CNN) based methodology for electroencephalogram (EE...
To report an innovative spike detection algorithm that tailors its detection to the patient. Interic...
In this study, we introduce a two-stage procedure based on support vector machines for the automatic...
Automatic spike detection from epileptic EEG data is a pressing clinical problem in terms of locall...
International audienceEpilepsy is one of the diseases that are more subject to consultation in neuro...
The algorithm of automatic EEG spike detection and its implementation is described in this article. ...
Implementation and Improvements on Morphological Filter Based EEG Spike Detection Algorithm The main...