2018
DOI: 10.3390/s18103451
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Multi-Channel Convolutional Neural Networks Architecture Feeding for Effective EEG Mental Tasks Classification

Abstract: Mental tasks classification is increasingly recognized as a major challenge in the field of EEG signal processing and analysis. State-of-the-art approaches face the issue of spatially unstable structure of highly noised EEG signals. To address this problem, this paper presents a multi-channel convolutional neural network architecture with adaptively optimized parameters. Our solution outperforms alternative methods in terms of classification accuracy of mental tasks (imagination of hand movements and speech so… Show more

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Cited by 35 publications
(17 citation statements)
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References 49 publications
(99 reference statements)
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“…This approach could be beneficial, especially for further exploration of the unexpected information found by some participants in the data during pulsation analysis, as discussed in Section 6 of this paper. Although EEG interfaces are still not mature enough to be fully effective in professional contexts, they could be used to research neurocognitive workload reduction [ 62 , 63 , 64 ]. Our tests are limited to a laboratory setting, yet there is not much difference between real conditions and our study scenario.…”
Section: Results and Discussionmentioning
confidence: 99%
“…This approach could be beneficial, especially for further exploration of the unexpected information found by some participants in the data during pulsation analysis, as discussed in Section 6 of this paper. Although EEG interfaces are still not mature enough to be fully effective in professional contexts, they could be used to research neurocognitive workload reduction [ 62 , 63 , 64 ]. Our tests are limited to a laboratory setting, yet there is not much difference between real conditions and our study scenario.…”
Section: Results and Discussionmentioning
confidence: 99%
“…The architecture shows 5 different input channels for ECG, EMG, respiration, BVP, and accelerometer, respectively. The reason for going forward in separating the channels for different biosignals lies with the fact that the initial feature learning using convolutional neural network for a particular biosignal is being kept discrete with respect to other biosignals for preventing the initial information mixing between individuals [24, 25]. Therefore, the features corresponding to each biosignal such as ECG (4 features), EMG (3 features), respiration (3 features), BVP (3 features), and an accelerometer (15 features) have been coupled respectively and passed along the respective channels.…”
Section: Deep Learningmentioning
confidence: 99%
“…In this sector one of the most important computational tasks is fraud detection, which unlike most statistical data analysis, concerns itself with data in motion, with real time emphasis. Some AI application require enormous collections of data to be stored, prepared and processed by machine learning such as the EEG annotation data [13], industrial emergency states detection [14] [15] or medical augmented reality future diagnosis [16].…”
Section: B Industrial Applicationsmentioning
confidence: 99%