Sparse coding classification and cepstral singular value for cognitive workload estimation

•A new ECG measure for automatic cognitive load classification is proposed.•The measure integrates the quefrency and algebraic information of the signals.•A sparse coding method is successfully developed to classify workload levels.•The proposed method outperforms previous ECG-based workload estimat...

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Bibliographic Details
Published in:Computers & electrical engineering Vol. 91; p. 107031
Main Authors: Ghaderyan, Peyvand, Abbasi, Ataollah
Format: Journal Article
Language:English
Published: Amsterdam Elsevier Ltd 01.05.2021
Elsevier BV
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ISSN:0045-7906, 1879-0755
Online Access:Get full text
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Summary:•A new ECG measure for automatic cognitive load classification is proposed.•The measure integrates the quefrency and algebraic information of the signals.•A sparse coding method is successfully developed to classify workload levels.•The proposed method outperforms previous ECG-based workload estimation algorithms. Cognitive workload estimation (CLE) is an interesting but challenging task with applications ranging from diagnosis and treatment of nervous system disorders to brain computer interface. The performance of CLE is usually affected by individual differences and recording noises. Noise-robustness paradigms that are independent of small variations may offer a solution to this challenge. Hence, a new CLE system based on the novel application of integrated singular value decomposition (SVD), cepstrum analysis and sparse non-negative least-square coding method was proposed. It extracted both of algebraic and harmonic information. The method was tested using electrocardiogram signals of 45 subjects while performing an arithmetic task with different levels of difficulty. It effectively estimated the workload levels using a small number of features with an average accuracy of 91%. The Hankel matrix-based SVD performed as well as non-overlapping matrix. Furthermore, significant improvement in the performance was observed as compared to conventional classifiers and features.
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ISSN:0045-7906
1879-0755
DOI:10.1016/j.compeleceng.2021.107031