The World Health Organization (WHO) reported 1.25 million deaths yearly due to road traffic accidents worldwide and the number has been continuously increasing over the last few years. Nearly fifth of these accidents are caused by distracted drivers. Existing work of distracted driver detection is concerned with a small set of distractions (mostly, cell phone usage). Unreliable ad hoc methods are often used. In this paper, we present the first publicly available dataset for driver distraction identification with more distraction postures than existing alternatives. In addition, we propose a reliable deep learning-based solution that achieves a 90% accuracy. The system consists of a genetically weighted ensemble of convolutional neural netwo...
Distracted driving is the prime factor of motor vehicle accidents. Current studies on distraction de...
According to the National Highway Traffic Safety Administration, 3142 people were killed in motor ve...
We propose a multi-task learning framework for improving the performance of vision-based deep-learni...
With the rise in globalization, Distracted Driving induces many deaths in road accidents and has bec...
Distracted driving has been considered one of the reasons for traffic accidents. The american nation...
According to the motor vehicle safety division, over the past 5-10 years, usage of motor vehicles ha...
Distracted driving is a major contributor to motor vehicle accidents, causing injury and loss of lif...
With the rapid spreading of in-vehicle information systems such as smartphones, navigation systems, ...
© Springer International Publishing AG 2017Driver distraction is the leading factor in most car cras...
In the last decade, distraction detection of a driver gained a lot of significance due to increases ...
The growth of the economy and technology is increasing the popularity of automotive, but it also inc...
It is only a matter of time until autonomous vehicles become ubiquitous; however, human driving supe...
It is only a matter of time until autonomous vehicles become ubiquitous; however, human driving supe...
Abundant evidence shows that driver distraction is one of the fundamental causes of traffic accident...
Increasing efforts in the transportation system have recently improved driver safety and reduced cra...
Distracted driving is the prime factor of motor vehicle accidents. Current studies on distraction de...
According to the National Highway Traffic Safety Administration, 3142 people were killed in motor ve...
We propose a multi-task learning framework for improving the performance of vision-based deep-learni...
With the rise in globalization, Distracted Driving induces many deaths in road accidents and has bec...
Distracted driving has been considered one of the reasons for traffic accidents. The american nation...
According to the motor vehicle safety division, over the past 5-10 years, usage of motor vehicles ha...
Distracted driving is a major contributor to motor vehicle accidents, causing injury and loss of lif...
With the rapid spreading of in-vehicle information systems such as smartphones, navigation systems, ...
© Springer International Publishing AG 2017Driver distraction is the leading factor in most car cras...
In the last decade, distraction detection of a driver gained a lot of significance due to increases ...
The growth of the economy and technology is increasing the popularity of automotive, but it also inc...
It is only a matter of time until autonomous vehicles become ubiquitous; however, human driving supe...
It is only a matter of time until autonomous vehicles become ubiquitous; however, human driving supe...
Abundant evidence shows that driver distraction is one of the fundamental causes of traffic accident...
Increasing efforts in the transportation system have recently improved driver safety and reduced cra...
Distracted driving is the prime factor of motor vehicle accidents. Current studies on distraction de...
According to the National Highway Traffic Safety Administration, 3142 people were killed in motor ve...
We propose a multi-task learning framework for improving the performance of vision-based deep-learni...