A Decomposition-Based Hybrid Ensemble CNN Framework for Improving
Cross-Subject EEG Decoding Performance
- URL: http://arxiv.org/abs/2203.09477v1
- Date: Mon, 14 Mar 2022 13:12:31 GMT
- Title: A Decomposition-Based Hybrid Ensemble CNN Framework for Improving
Cross-Subject EEG Decoding Performance
- Authors: Ruilin Li, Ruobin Gao, P. N. Suganthan
- Abstract summary: We propose a decomposition-based hybrid ensemble convolutional neural network (CNN) framework to enhance the capability of decoding EEG signals.
Our framework can be simply extended to any CNN architecture and applied in any EEG-related sectors.
- Score: 6.762514044136396
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Electroencephalogram (EEG) signals are complex, non-linear, and
non-stationary in nature. However, previous studies that applied decomposition
to minimize the complexity mainly exploited the hand-engineering features,
limiting the information learned in EEG decoding. Therefore, extracting
additional primary features from different disassembled components to improve
the EEG-based recognition performance remains challenging. On the other hand,
attempts have been made to use a single model to learn the hand-engineering
features. Less work has been done to improve the generalization ability through
ensemble learning. In this work, we propose a novel decomposition-based hybrid
ensemble convolutional neural network (CNN) framework to enhance the capability
of decoding EEG signals. CNNs, in particular, automatically learn the primary
features from raw disassembled components but not handcraft features. The first
option is to fuse the obtained score before the Softmax layer and execute
back-propagation on the entire ensemble network, whereas the other is to fuse
the probability output of the Softmax layer. Moreover, a component-specific
batch normalization (CSBN) layer is employed to reduce subject variability.
Against the challenging cross-subject driver fatigue-related situation
awareness (SA) recognition task, eight models are proposed under the framework,
which all showed superior performance than the strong baselines. The
performance of different decomposition methods and ensemble modes were further
compared. Results indicated that discrete wavelet transform (DWT)-based
ensemble CNN achieves the best 82.11% among the proposed models. Our framework
can be simply extended to any CNN architecture and applied in any EEG-related
sectors, opening the possibility of extracting more preliminary information
from complex EEG data.
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