Driver identification is a momentous field of modern decorated vehicles in the perspective of the controller area network (CAN-Bus). Many conventional systems are used to identify the driver. One step ahead, most of the researchers use sensor data of CAN-Bus but there are some difficulties because of the variation of a protocol of different models of vehicle. We aim to identify the driver through supervised learning algorithms based on driving behavior analysis. To identify the driver, a driver verification technique is proposed that evaluate driving pattern using the measurement of CAN sensor data. In this paper on-board diagnostic (OBD-II) is used to capture the data from CANBus sensor and the sensors are listed under SAE J1979 statement....
Inferring driver maneuvers is a fundamental issue in Advanced Driver Assistance Systems (ADAS), whic...
This paper describes a system for the automatic recognition of driving manoeuvres in the automobile ...
This research is an explorative study to look for the potential to predict traffic density from driv...
Driver identification is a momentous field of modern decorated vehicles in the controller area netwo...
Nowadays, traffic accidents occur due to the increasing number of vehicles. In the researches, it wa...
The exponential growth of car generated data, the increased connectivity, and the advances in artifi...
Abstract In the last decade, significant advances have been made in sensing and communication techno...
Araç donanım teknolojisindeki gelişmeler büyük ölçekli araç sürüş verilerinin toplanmasına olanak sa...
Recently, cutting edge technologies to facilitate data collection have emerged on a large scale. One...
In recent years, modeling and recognizing driver behavior have become crucial to understanding intel...
Driver identification and path kind identification are becoming very critical topics given the incre...
Generally, the present disclosure is directed to classifying a user as driver or passenger in a vehi...
This research is an explorative study to look for the potential to predict traffic density from driv...
Driving is a common task that involves skill and individual preferences that can differ between driv...
The advances in vehicle equipment technology enabled us easy and large-scale collection of high-volu...
Inferring driver maneuvers is a fundamental issue in Advanced Driver Assistance Systems (ADAS), whic...
This paper describes a system for the automatic recognition of driving manoeuvres in the automobile ...
This research is an explorative study to look for the potential to predict traffic density from driv...
Driver identification is a momentous field of modern decorated vehicles in the controller area netwo...
Nowadays, traffic accidents occur due to the increasing number of vehicles. In the researches, it wa...
The exponential growth of car generated data, the increased connectivity, and the advances in artifi...
Abstract In the last decade, significant advances have been made in sensing and communication techno...
Araç donanım teknolojisindeki gelişmeler büyük ölçekli araç sürüş verilerinin toplanmasına olanak sa...
Recently, cutting edge technologies to facilitate data collection have emerged on a large scale. One...
In recent years, modeling and recognizing driver behavior have become crucial to understanding intel...
Driver identification and path kind identification are becoming very critical topics given the incre...
Generally, the present disclosure is directed to classifying a user as driver or passenger in a vehi...
This research is an explorative study to look for the potential to predict traffic density from driv...
Driving is a common task that involves skill and individual preferences that can differ between driv...
The advances in vehicle equipment technology enabled us easy and large-scale collection of high-volu...
Inferring driver maneuvers is a fundamental issue in Advanced Driver Assistance Systems (ADAS), whic...
This paper describes a system for the automatic recognition of driving manoeuvres in the automobile ...
This research is an explorative study to look for the potential to predict traffic density from driv...