OperatorEYEVP: Operator Dataset for Fatigue Detection Based on Eye Movements, Heart Rate Data, and Video Information. / Kovalenko, Svetlana; Mamonov, Anton; Kuznetsov, Vladislav et al.
In: Sensors (Basel, Switzerland), Vol. 23, No. 13, 6197, 06.07.2023.Research output: Contribution to journal › Article › peer-review
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TY - JOUR
T1 - OperatorEYEVP: Operator Dataset for Fatigue Detection Based on Eye Movements, Heart Rate Data, and Video Information
AU - Kovalenko, Svetlana
AU - Mamonov, Anton
AU - Kuznetsov, Vladislav
AU - Bulygin, Alexandr
AU - Shoshina, Irina
AU - Brak, Ivan
AU - Kashevnik, Alexey
N1 - Funding: The research has been supported by Bortnik innovation fund #23ГУKoдИИC12-D7/79179.
PY - 2023/7/6
Y1 - 2023/7/6
N2 - Detection of fatigue is extremely important in the development of different kinds of preventive systems (such as driver monitoring or operator monitoring for accident prevention). The presence of fatigue for this task should be determined with physiological and objective behavioral indicators. To develop an effective model of fatigue detection, it is important to record a dataset with people in a state of fatigue as well as in a normal state. We carried out data collection using an eye tracker, a video camera, a stage camera, and a heart rate monitor to record a different kind of signal to analyze them. In our proposed dataset, 10 participants took part in the experiment and recorded data 3 times a day for 8 days. They performed different types of activity (choice reaction time, reading, correction test Landolt rings, playing Tetris), imitating everyday tasks. Our dataset is useful for studying fatigue and finding indicators of its manifestation. We have analyzed datasets that have public access to find the best for this task. Each of them contains data of eye movements and other types of data. We evaluated each of them to determine their suitability for fatigue studies, but none of them fully fit the fatigue detection task. We evaluated the recorded dataset by calculating the correspondences between eye-tracking data and CRT (choice reaction time) that show the presence of fatigue.
AB - Detection of fatigue is extremely important in the development of different kinds of preventive systems (such as driver monitoring or operator monitoring for accident prevention). The presence of fatigue for this task should be determined with physiological and objective behavioral indicators. To develop an effective model of fatigue detection, it is important to record a dataset with people in a state of fatigue as well as in a normal state. We carried out data collection using an eye tracker, a video camera, a stage camera, and a heart rate monitor to record a different kind of signal to analyze them. In our proposed dataset, 10 participants took part in the experiment and recorded data 3 times a day for 8 days. They performed different types of activity (choice reaction time, reading, correction test Landolt rings, playing Tetris), imitating everyday tasks. Our dataset is useful for studying fatigue and finding indicators of its manifestation. We have analyzed datasets that have public access to find the best for this task. Each of them contains data of eye movements and other types of data. We evaluated each of them to determine their suitability for fatigue studies, but none of them fully fit the fatigue detection task. We evaluated the recorded dataset by calculating the correspondences between eye-tracking data and CRT (choice reaction time) that show the presence of fatigue.
UR - https://www.scopus.com/record/display.uri?eid=2-s2.0-85164843812&origin=inward&txGid=922a20087fe135c2170789c9319b07f0
U2 - 10.3390/s23136197
DO - 10.3390/s23136197
M3 - Article
C2 - 37448047
VL - 23
JO - Sensors
JF - Sensors
SN - 1424-3210
IS - 13
M1 - 6197
ER -
ID: 52613040