Instantaneous mental workload assessment using time–frequency analysis and semi-supervised learning

Author:

Zhang JianhuaORCID,Li Jianrong,Wang Rubin

Abstract

AbstractThe real-time assessment of mental workload (MWL) is critical for development of intelligent human–machine cooperative systems in various safety–critical applications. Although data-driven machine learning (ML) approach has shown promise in MWL recognition, there is still difficulty in acquiring a sufficient number of labeled data to train the ML models. This paper proposes a semi-supervised extreme learning machine (SS-ELM) algorithm for MWL pattern classification requiring only a small number of labeled data. The measured data analysis results show that the proposed SS-ELM paradigm can effectively improve the accuracy and efficiency of MWL classification and thus provide a competitive ML approach to utilizing a large number of unlabeled data which are available in many real-world applications.

Funder

OsloMet Faculty TKD Strategic (Lighthouse) R&D Project

Publisher

Springer Science and Business Media LLC

Subject

Cognitive Neuroscience

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