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  • Turkish Journal of Science and Technology
  • Volume:16 Issue:1
  • One-dimensional Center Symmetric Local Binary Pattern Based Epilepsy Detection Method

One-dimensional Center Symmetric Local Binary Pattern Based Epilepsy Detection Method

Authors : Serkan METİN
Pages : 155-162
View : 50 | Download : 20
Publication Date : 2021-03-15
Article Type : Research Paper
Abstract :The diagnosis of epilepsy from the EEG signals is determined by the visual/manual evaluation performed by the neurologist. This evaluation process is laborious and evaluation results vary according to the experience level of neurologists. Therefore, automated systems that will be created using advanced signal processing techniques are important for diagnosis. In this study, a new feature extraction method is proposed using multiple kernel based one-dimensional center symmetric local binary pattern insert ignore into journalissuearticles values(1D-CSLBP); to identify epileptic seizures. To strengthen this method, levels have been created and multi-level feature extraction has been carried out. Discrete wavelet transform insert ignore into journalissuearticles values(DWT); was used to generate the levels and feature extraction was performed using the low pass filter coefficient insert ignore into journalissuearticles values(L bands); obtained at each level. Neighborhood component analysis insert ignore into journalissuearticles values(NCA); was used to select the most distinctive features. The obtained features are classified using the nearest neighbors insert ignore into journalissuearticles values(kNN); algorithm. A high performance method was obtained by using multiple kernel NCA and NCA. The 1D-CSLBP and NCA-based method has reached 100.0% accuracy in A-E, A-D-E, D-E, C-E situations.
Keywords : Feature extraction, local feature generation, feature selection, classification

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