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Epileptic seizure detection using fuzzy-rules-based sub-band specific features and layered multi-class SVM

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TLDR
The proposed LDAG-SVM with fuzzy-rules-based selected sub-band specific features provides better performance in terms of improved classification accuracy with reduced execution time compared to existing methods.
Abstract
In this paper, a new epileptic seizure detection method using fuzzy-rules-based sub-band specific features and layered directed acyclic graph support vector machine (LDAG-SVM) is proposed for classification of electroencephalogram (EEG) signals. Wavelet transformation is used to decompose the input EEG signals into various sub-bands. The nonlinear features, namely approximate entropy, largest Lyapunov exponent and correlation dimension, are extracted from each sub-band. In this proposed work, sub-band specific feature subset that is reduced in size and capable of discriminating samples is selected by employing fuzzy rules. For classification purpose, a new LDAG-SVM is used for detecting epileptic seizure. Every sub-band has its own characteristics. If appropriate features which characterize the specific sub-band are selected, then the classification accuracy is improved and computational complexity is reduced. The important advantage of the fuzzy logic is its close relation to human thinking. Due to the lengthy record and intra-professional variability, automation of epileptic detection is inevitable. Fuzzy rules are the natural choice of employing human expertise to build machine learning system. Performances of the proposed methods are evaluated using two different benchmark EEG datasets, namely Bonn and CHB-MIT. The performance measures such as classification accuracy, sensitivity, specificity, execution time and receiver operating characteristics are used to measure and analyze the performances of the proposed classifier. The proposed LDAG-SVM with fuzzy-rules-based selected sub-band specific features provides better performance in terms of improved classification accuracy with reduced execution time compared to existing methods.

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Citations
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Journal ArticleDOI

Detection of epileptic seizures on EEG signals using ANFIS classifier, autoencoders and fuzzy entropies

TL;DR: In this article , a novel diagnostic procedure using fuzzy theory and deep learning techniques is introduced, which is evaluated on the Bonn University dataset with six classification combinations and also on the Freiburg dataset.
Posted Content

Detection of Epileptic Seizures on EEG Signals Using ANFIS Classifier, Autoencoders and Fuzzy Entropies.

TL;DR: In this paper, a novel diagnostic procedure using fuzzy theory and deep learning techniques is introduced, which is evaluated on the Bonn University dataset with six classification combinations and also on the Freiburg dataset.
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Accuracy Enhancement of Epileptic Seizure Detection: A Deep Learning Approach with Hardware Realization of STFT

TL;DR: This paper aims at enhancing epilepsy seizure detection using deep learning models with an FPGA implementation of the short-time Fourier transform block and the Bonn EEG dataset has been used.
Journal ArticleDOI

Epileptic Seizure Detection and Experimental Treatment: A Review.

TL;DR: This article discusses recent advances in seizure sensing, signal processing, time- or frequency-domain analysis, and classification algorithms to detect and classify seizure stages, and explains the fundamentals of brain stimulation approaches, including transcranial magnetic stimulation, and how to use them to treat seizures.
Journal ArticleDOI

Autonomous deep feature extraction based method for epileptic EEG brain seizure classification

TL;DR: A novel method that can autonomously extract features from deep within a convolutional neural network (CNN) and generate easy to understand rules/explanations used for the classification of seizures from EEG signals is proposed.
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