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1.
Ergonomics ; : 1-17, 2024 Jul 22.
Artículo en Inglés | MEDLINE | ID: mdl-39037945

RESUMEN

Recent studies have focused on accurately estimating mental workload using machine learning algorithms and extracting features from physiological measures. However, feature extraction leads to the loss of valuable information and often results in binary classifications that lack specificity in the identification of optimum mental workload. This study investigates the feasibility of using raw physiological data (EEG, facial EMG, ECG, EDA, pupillometry) combined with Functional Data Analysis (FDA) to estimate the mental workload of human drivers. A driving scenario with five tasks was employed, and subjective ratings were collected. Results demonstrate that the FDA applied nine different combinations of raw physiological signals achieving a maximum 90% accuracy, outperforming extracted features by 73%. This study shows that the mental workload of human drivers can be accurately estimated without utilising burdensome feature extraction. The approach proposed in this study offers promise for mental workload assessment in real-world applications.


This study aimed to estimate the mental workload of human drivers using physiological signals and Functional Data Analysis (FDA). By comparing models using raw data and extracted features, the results show that the FDA with raw data achieved a high accuracy of 90%, outperforming the model with extracted features (73%).

2.
Appl Ergon ; 118: 104274, 2024 Jul.
Artículo en Inglés | MEDLINE | ID: mdl-38521001

RESUMEN

This study investigates the impact of advanced driver-assistance systems on drivers' mental workload. Using a combination of physiological signals including ECG, EMG, EDA, EEG (af4 and fc6 channels from the theta band), and eye diameter data, this study aims to predict and categorize drivers' mental workload into low, adequate, and high levels. Data were collected from five different driving situations with varying cognitive demands. A functional linear regression model was employed for prediction, and the accuracy rate was calculated. Among the 31 tested combinations of physiological variables, 9 combinations achieved the highest accuracy result of 90%. These results highlight the potential benefits of utilizing raw physiological signal data and employing functional data analysis methods to understand and assess driver mental workload. The findings of this study have implications for the design and improvement of driver-assistance systems to optimize safety and performance.


Asunto(s)
Conducción de Automóvil , Procesos Mentales , Desempeño Psicomotor , Carga de Trabajo , Conducción de Automóvil/psicología , Procesos Mentales/fisiología , Análisis de Datos , Humanos , Masculino , Femenino , Adulto Joven , Adulto , Electrodos , Envío de Mensajes de Texto , Radio , Estimulación Acústica , Estimulación Luminosa , Matemática , Electrocardiografía , Electroencefalografía , Electromiografía , Respuesta Galvánica de la Piel , Cognición/fisiología , Seguridad , Desempeño Psicomotor/fisiología
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