Assessing cognitive mental workload via EEG signals and an ensemble deep learning classifier based on denoising autoencoders

S Yang, Z Yin, Y Wang, W Zhang, Y Wang…�- Computers in biology and�…, 2019 - Elsevier
S Yang, Z Yin, Y Wang, W Zhang, Y Wang, J Zhang
Computers in biology and medicine, 2019Elsevier
To estimate the reliability and cognitive states of operator performance in a human-machine
collaborative environment, we propose a novel human mental workload (MW) recognizer
based on deep learning principles and utilizing the features of the electroencephalogram
(EEG). To determine personalized properties in high dimensional EEG indicators, we
introduce a feature mapping layer in stacked denoising autoencoder (SDAE) that is capable
of preserving the local information in EEG dynamics. The ensemble classifier is then built via�…
Abstract
To estimate the reliability and cognitive states of operator performance in a human-machine collaborative environment, we propose a novel human mental workload (MW) recognizer based on deep learning principles and utilizing the features of the electroencephalogram (EEG). To determine personalized properties in high dimensional EEG indicators, we introduce a feature mapping layer in stacked denoising autoencoder (SDAE) that is capable of preserving the local information in EEG dynamics. The ensemble classifier is then built via the subject-specific integrated deep learning committee, and adapts to the cognitive properties of a specific human operator and alleviates inter-subject feature variations. We validate our algorithms and the ensemble SDAE classifier with local information preservation (denoted by EL-SDAE) on an EEG database collected during the execution of complex human-machine tasks. The classification performance indicates that the EL-SDAE outperforms several classical MW estimators when its optimal network architecture has been identified.
Elsevier