Automatic recognition of epileptic seizure in EEG via support vector machine and dimension fractal
Tipo
Artigo de evento
Data de publicação
2009
Periódico
Proceedings of the International Joint Conference on Neural Networks
Citações (Scopus)
18
Autores
Schneider M.
Mustaro P.N.
Lima C.A.M.
Mustaro P.N.
Lima C.A.M.
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Resumo
Support vector machine (SVM) is a machine learning technique widely applied in classification problems. SVM are based on the Vapnik's Statistical Learning Theory, and successively extended by a number of researchers. On the order hand, the electroencephalogram (EEG) signal captures the electrical activity of the brain and is an important source of information for studying neurological disorders. In order to extract relevant information of EEG signal, a variety of computerized-analysis methods have been developed. Recent studies indicate that methods based on the nonlinear dynamics theory can extract valuable information from neuronal dynamics. However, many these of methods need large amount of data and are computationally expensive. From chaos theory, a global value that is relatively simple to compute is the fractal dimension (FD), it can be used to measure the geometrical complexity of a time series. The FD of a waveform represents a powerful tool for transient detection. In analysis of EEG this feature can been used to identify and distinguish specific states of physiologic function. A variety of algorithms are available for the computation of FD. In this work, we employ SVM to classify the EEG signals from healthy subjects and epileptic subjects using as the features vector the FD. From the experimental results, we can see that classification based on SVM with FD perform well in EEG signals classification, which indicates this classification method is valid and has promising application. © 2009 IEEE.
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Assuntos Scopus
Analysis method , Automatic recognition , Classification methods , EEG signals , EEG signals classification , Electrical activities , Electroencephalogram signals , Epileptic seizures , Features vector , Geometrical complexity , Healthy subjects , Machine learning techniques , Neurological disorders , Neuronal dynamics , Nonlinear dynamics theory , Physiologic function , Specific state , Statistical learning theory , Transient detection , Wave forms