Assessment of Mental Stress Through the
Analysis of Physiological Signals
Acquired From Wearable Devices
Matteo Zanetti, Luca Faes, Mariolino De Cecco, Alberto Fornaser,
Martina Valente, Giovanni Guandalini and Giandomenico Nollo
Abstract Mental stress is a physiological state that directly correlates to the quality
of life of individuals. Generally speaking, but especially true for disabled or elderly
subjects, the assessment of such condition represents a very strong indicator corre-
lated to the difficulties, and, in some case, to the frustration that derives from the
execution of a task that results troublesome to be accomplished. This article describes
a novel procedure for the assessment of the mental stress level through the use of low
invasive wireless wearable devices. The information contained in electrocardiogram,
respiratory signal, blood volume pulse, and electroencephalogram was extracted to
set up an estimator for the cognitive workload level. A random forest classifier was
implemented to assess the level of mental stress starting from a pool of 3481 features
computed from the aforementioned physiological quantities. The proposed system
was applied in a scenario in which two different mental states were elicited in the
subject under investigation: first, a baseline resting condition was induced by the
presentation of a relaxing video; then a stressful cognitive state was provoked by the
M. Zanetti (B ) · M. De Cecco · A. Fornaser · G. Nollo
Department of Industrial Engineering, University of Trento, via Sommarive, 9,
38123 Povo, TN, Italy
e-mail: matteo.zanetti@unitn.it
M. De Cecco
e-mail: mariolino.dececco@unitn.it
G. Nollo
e-mail: giandomenico.nollo@unitn.it
L. Faes
Department of Energy, Information Engineering and Mathematical Models,
University of Palermo, Viale delle Scienze, Ed. 9,
90128 Palermo, PA, Italy
M. Valente
Center for Neuroscience and Cognitive System, University of Trento, Corso Bettini, 31, 38068
Rovereto, TN, Italy
G. Guandalini
Villa Rosa hospital, Azienda Provinciale per i Servizi Sanitari (APSS), via Spolverine, 84, 38057
Pergine Valsugana, TN, Italy
© Springer Nature Switzerland AG 2019
A. Leone et al. (eds.), Ambient Assisted Living, Lecture Notes in Electrical
Engineering 544, https://doi.org/10.1007/978-3-030-05921-7_20
243