IEEE Intelligent Vehicles Symposium (IV), Alcala de Henares, SPAIN, JUN 03-07, 2012International audienceThis paper presents an approach based on Bayesian Networks to estimate the workload of operators. The models take as inputs the entropy of different number of physiological features, as well as a cognitive feature (reaction time to a secondary task). They output the workload variation of subjects involved in successive tasks demanding different levels of cognitive resources. The performances of the classifiers are discussed in term of two criteria to be jointly optimized: the diversity, i.e. the ability of the model to perform on different subjects, and the accuracy, i.e., how close from the (subjectively estimated) workload level the mo...
The present study aims to add to the literature on driver workload prediction using machine learning...
The study on cognitive workload is a field of research of high interest in the digital society. The ...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
IEEE Intelligent Vehicles Symposium (IV), Alcala de Henares, SPAIN, JUN 03-07, 2012International aud...
EEG data has been used to discriminate levels of mental workload when classifiers are created for ea...
EEG data has been used to discriminate levels of mental workload when classifiers are created for ea...
International audienceDespite growing interest over the decades, the question of estimating cognitiv...
International audienceDespite growing interest over the decades, the question of estimating cognitiv...
Abstract. Operators on naval ships have to act in dynamic, critical and highdemand task environments...
The overall safety and reliability of critical systems may be improved if interfaces can be tailored...
This study examines the challenging problem of modelling the interaction between individual attentio...
This study examines the challenging problem of modelling the interaction between individual attentio...
This study examines the challenging problem of modelling the interaction between individual attentio...
The measurement of the mental workload during real tasks by means of neurophysiological signals is s...
Understanding the driver’s cognitive load is important for evaluating in-vehicle user interfaces. Th...
The present study aims to add to the literature on driver workload prediction using machine learning...
The study on cognitive workload is a field of research of high interest in the digital society. The ...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
IEEE Intelligent Vehicles Symposium (IV), Alcala de Henares, SPAIN, JUN 03-07, 2012International aud...
EEG data has been used to discriminate levels of mental workload when classifiers are created for ea...
EEG data has been used to discriminate levels of mental workload when classifiers are created for ea...
International audienceDespite growing interest over the decades, the question of estimating cognitiv...
International audienceDespite growing interest over the decades, the question of estimating cognitiv...
Abstract. Operators on naval ships have to act in dynamic, critical and highdemand task environments...
The overall safety and reliability of critical systems may be improved if interfaces can be tailored...
This study examines the challenging problem of modelling the interaction between individual attentio...
This study examines the challenging problem of modelling the interaction between individual attentio...
This study examines the challenging problem of modelling the interaction between individual attentio...
The measurement of the mental workload during real tasks by means of neurophysiological signals is s...
Understanding the driver’s cognitive load is important for evaluating in-vehicle user interfaces. Th...
The present study aims to add to the literature on driver workload prediction using machine learning...
The study on cognitive workload is a field of research of high interest in the digital society. The ...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...