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Neuro-Fusion: A Unified Approach for Cognitive Workload Classification Using Electroencephalogram (EEG) Data
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1  Shanghai Jiao Tong University, China
Academic Editor: Paola Saccomandi

Abstract:

In a world marked by perpetual change and constant evolution, the pursuit of optimizing human performance transcends traditional boundaries. Central to this relentless quest is the precise assessment of cognitive workload—an essential element in unlocking and enhancing human potential. Neuro-Fusion represents a pioneering approach poised to revolutionize cognitive workload classification. This innovative methodology seamlessly integrates advanced neural network models with EEG (electroencephalogram) data, merging the capabilities of LSTM (Long Short-Term Memory) and GRU (Gated Recurrent Unit) models into a unified, adaptive framework designed for accurate cognitive workload assessment. At the core of our research lies the real-time application of the Neuro-Fusion model in cognitive workload assessment, powered by EEG data from the STEW dataset. Rigorous EEG data preprocessing facilitated feature extraction, channeling these processed data into the innovative LSTM-GRU hybrid architecture, giving rise to the formidable Neuro-Fusion model. The Neuro-Fusion model achieved remarkable cognitive workload classification accuracy, boasting an impressive 96%. This precision underscores the substantial potential of our approach in providing dependable cognitive assessments, especially in scenarios demanding precision. The implications of our research extend across diverse practical applications. Neuro-Fusion promises to offer invaluable insights into cognitive workloads, facilitating more informed decision-making and enhanced human performance optimization. Its practical implications span various sectors, promising efficiency, productivity, and safety improvements. Neuro-Fusion, merging neural networks with EEG data, revolutionizes cognitive workload assessment, with implications for diverse sectors.

Keywords: Electroencephalogram; Long Short-Term Memory; Gated Recurrent Unit; Neuro-Fusion
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