Authors
Muhammad Kaleem, Dharmendra Gurve, Aziz Guergachi, Sridhar Krishnan
Publication date
2018/7/11
Journal
Journal of neural engineering
Volume
15
Issue
5
Pages
056004
Publisher
IOP Publishing
Description
Objective
The objective of the work described in this paper is the development of a computationally efficient methodology for patient-specific automatic seizure detection in long-term multi-channel EEG recordings.
Approach
A novel patient-specific seizure detection approach based on a signal-derived empirical mode decomposition (EMD)-based dictionary approach is proposed. For this purpose, we use an empirical framework for EMD-based dictionary creation and learning, inspired by traditional dictionary learning methods, in which the EMD-based dictionary is learned from the multi-channel EEG data being analyzed for automatic seizure detection. We present the algorithm for dictionary creation and learning, whose purpose is to learn dictionaries with a small number of atoms. Using training signals belonging to seizure and non-seizure classes, an initial dictionary, termed as the raw dictionary, is formed. The …
Total citations
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