Intelligent Human Operator Mental Fatigue Assessment Method Based on Gaze Movement Monitoring

Modern mental fatigue detection methods include many parameters for evaluation. For example, many researchers use human subjective evaluation or driving parameters to assess this human condition. Development of a method for detecting the functional state of mental fatigue is an extremely important task. Despite the fact that human operator support systems are becoming more and more widespread, at the moment there is no open-source solution that can monitor this human state based on eye movement monitoring in real time and with high accuracy. Such a method allows the prevention of a large number of potential hazardous situations and accidents in critical industries (nuclear stations, transport systems, and air traffic control). This paper describes the developed method for mental fatigue detection based on human eye movements. We based our research on a developed earlier dataset that included captured eye-tracking data of human operators that implemented different tasks during the day. In the scope of the developed method, we propose a technique for the determination of the most relevant gaze characteristics for mental fatigue state detection. The developed method includes the following machine learning techniques for human state classification: random forest, decision tree, and multilayered perceptron. The experimental results showed that the most relevant characteristics are as follows: average velocity within the fixation area; average curvature of the gaze trajectory; minimum curvature of the gaze trajectory; minimum saccade length; percentage of fixations shorter than 150 ms; and proportion of time spent in fixations shorter than 150 milliseconds. The processing of eye movement data using the proposed method is performed in real time, with the maximum accuracy (0.85) and F1-score (0.80) reached using the random forest method. © 2024 Elsevier B.V., All rights reserved.

Авторы
Kashevnik Alexey Mihajlovich 1 , Kovalenko Svetlana D. 2 , Mamonov Anton A. 3, 4 , Hamoud Batol 1 , Bulygin Alexandr 1 , Kuznetsov Vladislav V. 5 , Shoshina I.I. 6 , Brak Ivan V. 3, 7 , Kiselev Gleb A. 3
Journal
Издательство
Multidisciplinary Digital Publishing Institute (MDPI)
Номер выпуска
21
Язык
English
Статус
Published
Номер
6805
Том
24
Год
2024
Организации
  • 1 St. Petersburg Federal Research Center of the Russian Academy of Sciences, Saint Petersburg, Russian Federation
  • 2 Laboratory for Cognitive Psychology of Digital Interfaces User, HSE University, Moscow, Russian Federation
  • 3 Mathematics and Natural Sciences, RUDN University, Moscow, Russian Federation
  • 4 Department of Digital Education, Moscow State University of Psychology and Education, Moscow, Russian Federation
  • 5 Federal Research Center Informatics and Management of the Russian Academy of Sciences, Moscow, Russian Federation
  • 6 Institute for Cognitive Research, Saint Petersburg State University, Saint Petersburg, Russian Federation
  • 7 Faculty of Information Technology, Novosibirsk State University, Novosibirsk, Russian Federation
Ключевые слова
eye-tracking; machine learning; mental fatigue detection
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