A Hybrid Deep Neural Network Approach to Recognize Driving Fatigue Based on EEG Signals
Mohammed Alghanim(Zarqa University), Mohammad Kanan(Zarqa University), Ahmed Solyman(Glasgow Caledonian University), Mohammad R. Khosravi(Shiraz University of Technology), Hani Attar(Zarqa University), Khosro Rezaee(Mofid University)
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