Abstract
AbstractObjectiveClassification of electroencephalography (EEG) signals with high accuracy using short recording intervals has been a challenging problem in developing brain computer interfaces (BCIs). This paper presents a novel feature extraction method for EEG recordings to tackle this problem.ApproachThe proposed approach is based on the concept that the brain functions in a dynamic manner, and utilizes dynamic functional connectivity graphs. The EEG data is first segmented into intervals during which functional networks sustain their connectivity. Functional connectivity networks for each identified segment are then localized, and graphs are constructed, which will be used as features. To take advantage of the dynamic nature of the generated graphs, a Long Short Term Memory (LSTM) classifier is employed for classification.Main resultsFeatures extracted from various durations of post-stimulus EEG data associated with motor execution and imagery tasks are used to test the performance of the classifier. Results show an average accuracy of 85.32% about only 500 ms after stimulus presentation.SignificanceOur results demonstrate, for the first time, that using the proposed feature extraction method, it is possible to classify motor tasks from EEG recordings using a short interval of the data in the order of hundreds of milliseconds (e.g. 500 ms).This duration is considerably shorter than what has been reported before. These results will have significant implications for improving the effectiveness and the speed of BCIs, particularly for those used in assistive technologies.
Publisher
Cold Spring Harbor Laboratory
Reference147 articles.
1. Lotte F , Congedo M , Lécuyer A , Lamarche F and Arnaldi B A review of classification algorithms for EEG-based brain–computer interfaces Journal of Neural Engineering 4 R1
2. Lotte F , Bougrain L , Cichocki A , Clerc M , Congedo M , Rakotomamonjy A and Yger F A review of classification algorithms for EEG-based brain–computer interfaces: a 10 year update Journal of Neural Engineering 15 031005
3. Signal processing techniques for motor imagery brain computer interface: A review;Array,2019
4. An advanced bispectrum features for EEG-based motor imagery classification;Expert Systems with Applications,2019
5. Motor imagery EEG classification based on kernel hierarchical extreme learning machine;Cognitive Computation,2017