Objective. The objective of this paper is to present a driver sleepiness detection model based on electrophysiological data and a neural network consisting of convolutional neural networks and a long short-term memory architecture. Approach. The model was developed and evaluated on data from 12 different experiments with 269 drivers and 1187 driving sessions during daytime (low sleepiness condition) and night-time (high sleepiness condition), collected during naturalistic driving conditions on real roads in Sweden or in an advanced moving-base driving simulator. Electrooculographic and electroencephalographic time series data, split up in 16 634 2.5 min data segments was used as input to the deep neural network. This probably constitutes th...
Advancements in globalization have significantly seen a rise in road travel. This has also led to in...
This paper addresses the problem of detecting sleepiness in car drivers. First, a variety of sleepin...
Georgia Tuckwell, A deep learning approach to sleep history classification during the task of dri...
Objective. The objective of this paper is to present a driver sleepiness detection model based on el...
Driver sleepiness contributes to a large amount of all road traffic crashes. Developing an objective...
Driver sleepiness is a cause for crashes and it is estimated that 3.9 to 33 % of all crashes might b...
Driver sleepiness is a cause for crashes and it is estimated that 3.9 to 33 % of all crashes might b...
Driver sleepiness is a cause for crashes and it is estimated that 3.9 to 33 % of all crashes might b...
Abstract Detecting drowsiness in drivers while driving is extremely important to avoid possible acci...
Driver fatigue is a contributing factor in about 20% of all fatal road crashes worldwide. Countermea...
Drowsiness is described as a state of reduced consciousness and vigilance accompanied by a desire or...
Falling asleep while operating a moving vehicle is a contributing factor to the statistics of road r...
Falling asleep while operating a moving vehicle is a contributing factor to the statistics of road r...
International audienceA sleepy driver is arguably much more dangerous on the road than the one who i...
International audienceA sleepy driver is arguably much more dangerous on the road than the one who i...
Advancements in globalization have significantly seen a rise in road travel. This has also led to in...
This paper addresses the problem of detecting sleepiness in car drivers. First, a variety of sleepin...
Georgia Tuckwell, A deep learning approach to sleep history classification during the task of dri...
Objective. The objective of this paper is to present a driver sleepiness detection model based on el...
Driver sleepiness contributes to a large amount of all road traffic crashes. Developing an objective...
Driver sleepiness is a cause for crashes and it is estimated that 3.9 to 33 % of all crashes might b...
Driver sleepiness is a cause for crashes and it is estimated that 3.9 to 33 % of all crashes might b...
Driver sleepiness is a cause for crashes and it is estimated that 3.9 to 33 % of all crashes might b...
Abstract Detecting drowsiness in drivers while driving is extremely important to avoid possible acci...
Driver fatigue is a contributing factor in about 20% of all fatal road crashes worldwide. Countermea...
Drowsiness is described as a state of reduced consciousness and vigilance accompanied by a desire or...
Falling asleep while operating a moving vehicle is a contributing factor to the statistics of road r...
Falling asleep while operating a moving vehicle is a contributing factor to the statistics of road r...
International audienceA sleepy driver is arguably much more dangerous on the road than the one who i...
International audienceA sleepy driver is arguably much more dangerous on the road than the one who i...
Advancements in globalization have significantly seen a rise in road travel. This has also led to in...
This paper addresses the problem of detecting sleepiness in car drivers. First, a variety of sleepin...
Georgia Tuckwell, A deep learning approach to sleep history classification during the task of dri...