Abstract
Feature extraction and classification for EEG signals are key technologies in medical applications. This paper proposes an efficient feature extraction framework that combines hybrid feature extraction and feature selection method. In order to fully exploit information from EEG signals, several feature extraction methods of different types are applied, which are autoregressive model, discrete wavelet transform, wavelet packet transform and sample entropy. After information fusion, feature selection methods are introduced to deal with redundant and irrelevant information, which is advantageous to classification. In this phase, global optimization strategy based on binary particle swarm optimization (BPSO) is presented to enhance the performance of feature selection. To evaluate the results of feature extraction, experiments of class separability are conducted. Classification results on EEG dataset of university of Bonn show the superiority of the proposed method.
Original language | English |
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Title of host publication | 7th International Conference on Intelligent Control and Information Processing, ICICIP 2016 - Proceedings |
Publisher | IEEE |
Pages | 167-172 |
ISBN (Print) | 9781509021550 |
DOIs | |
Publication status | Published - 23 Mar 2017 |
Event | 7th International Conference on Intelligent Control and Information Processing, ICICIP 2016 - Siem Reap, Cambodia Duration: 1 Dec 2016 → 4 Dec 2016 |
Conference
Conference | 7th International Conference on Intelligent Control and Information Processing, ICICIP 2016 |
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Country/Territory | Cambodia |
City | Siem Reap |
Period | 1/12/16 → 4/12/16 |
Research Keywords
- EEG signals classification
- Feature extraction
- Feature selection
- Feature transformation