Skip to main content

New software could detect when people text and drive

Engineering researchers at Canada’s University of Waterloo are developing technology which can accurately determine when drivers are texting or engaged in other distracting activities. The system uses cameras and artificial intelligence (AI) to detect hand movements that deviate from normal driving behaviour and grades or classifies them in terms of possible safety threats.
September 20, 2017 Read time: 2 mins
Engineering researchers at Canada’s University of Waterloo are developing technology which can accurately determine when drivers are texting or engaged in other distracting activities. The system uses cameras and artificial intelligence (AI) to detect hand movements that deviate from normal driving behaviour and grades or classifies them in terms of possible safety threats.


Fakhri Karray, an electrical and computer engineering professor and director of the Centre for Pattern Analysis and Machine Intelligence (CPAMI) at Waterloo, said that information could be used to improve road safety by warning or alerting drivers when they are dangerously distracted. As advanced self-driving features are increasingly added to conventional cars, he said, signs of serious driver distraction could be employed to trigger protective measures.

“The car could actually take over driving if there was imminent danger, even for a short while, in order to avoid crashes,” said Karray.

Algorithms at the heart of the technology were trained using machine-learning techniques to recognise actions such as texting, talking on a cellphone or reaching into the backseat to retrieve something. The seriousness of the action is assessed based on duration and other factors.

That work builds on extensive previous research at CPAMI on the recognition of signs, including frequent blinking, that drivers are in danger of falling asleep at the wheel. Head and face positioning are also important cues of distraction.

Ongoing research at the centre now seeks to combine the detection, processing and grading of several different kinds of driver distraction in a single system.

“It has a huge impact on society,” said Karray, citing estimates that distracted drivers are to blame for up to 75 per cent of all traffic accidents worldwide.

Related Content

  • Sensors reducing pedestrian-car collisions
    January 22, 2016
    The EU-funded ARTRAC project has developed new sensor technologies which it believes could help meet the European Commission’s target of halving road accidents by 2020. The project, which includes carmakers Volkswagen and Fiat, developed an affordable radar sensor that uses multiple antennas to detect, classify and avoid obstacles on the road before collision and reduce the likelihood of vehicles colliding with pedestrians.
  • Continental gestures to a safer driving future
    April 10, 2017
    To improve non-verbal communication between drivers and their vehicles, Continental has devised a range of user-friendly touch gestures for the cockpit, using a combination of gesture interaction and touch screens. This enables drivers to draw specific, defined symbols on the input display to trigger a diverse array of functions and features for rapid access. According to Dr Heinz Abel, head of Cross Product Solutions at Continental’s Instrumentation and Driver HMI business unit, the use of gestures and
  • Vinci Highways and Invision AI light up motorway in Greece
    December 19, 2023
    New smart system adjusts road lighting to suit driving conditions and save energy
  • London needs just one road user charge, says report
    July 8, 2019
    London’s patchwork of road charging schemes should be replaced by a single, distance-based user charge, according to new research. Apart from anything else, it would be much fairer… The UK capital’s multiple road charging schemes require a radical overhaul, according to a new report by the Centre for London thinktank. The suggested solution is to replace existing levies on drivers with a single, distance-based user charge which would more fairly reflect how much, and at what time, people are using London