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Attention-Inception and Long- Short-Term Memory-Based Electroencephalography Classification for Motor Imagery Tasks in Rehabilitation

Syed Umar Amin, Hamdi Altaheri, Ghulam Muhammad, Wadood Abdul, Mansour Alsulaiman

2021IEEE Transactions on Industrial Informatics127 citationsDOI

Abstract

In recent years, the contributions of deep learning have had a phenomenal impact on electroencephalography-based brain-computer interfaces. While the decoding accuracy of electroencephalography signals has continued to increase, the process has caused deep learning models to continuously expand in terms of size and computational resource requirements. However, due to their increased size and computational requirements, it has become difficult to embed, store, and execute deep learning models for artificial intelligence of things, cloud-based, or edge devices used in rehabilitation. Hence, this article proposes a novel deep learning-based lightweight model based on attention-inception convolutional neural network and long- short-term memory. The proposed model achieves excellent accuracy on public competition datasets while requiring few parameters and low computational time. Using the BCI competition IV 2a dataset and the high gamma dataset, the proposed model achieved 82.8% and 97.1% accuracies, respectively.

Topics & Concepts

Computer scienceDeep learningElectroencephalographyArtificial intelligenceConvolutional neural networkMotor imageryBrain–computer interfaceComputational resourceProcess (computing)Artificial neural networkDecoding methodsMachine learningPattern recognition (psychology)Computational complexity theoryPsychiatryOperating systemAlgorithmPsychologyTelecommunicationsEEG and Brain-Computer InterfacesAdvanced Memory and Neural ComputingECG Monitoring and Analysis
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