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

  • ODOT plans ‘smarter highway’
    May 2, 2013
    Until they can raise the US$1 billion it would take to expand congestion-plagued Oregon 217, state traffic planners say they'll focus on making it a smarter highway. Oregon Department of Transportation (ODOT) engineers believe that a US$6.5 million artificial traffic intelligence project planned for the 217 corridor will permanently alter the Portland metro area's daily commuting culture. The interconnected system will rely on new underground sensors and advanced computer algorithms. The federal government
  • IBTTA's Pat Jones: 'It’s about expanding people's comfort zone and mine as well'
    October 24, 2024
    For two decades, Pat Jones, has been executive director and CEO of IBTTA. As he approaches retirement at the end of this year, he talks to Adam Hill about a career spent ‘stretching and growing’ – and helping others to do the same
  • Connected Vehicles test vehicle to vehicle applications
    January 19, 2012
    In the US, the ITS Joint Program Office is about to conduct a series of Driver Clinics intended to gauge public reaction to Connected Vehicle safety technologies and applications. Starting in August, the US Department of Transportation (USDOT) will test Vehicle-to-Vehicle (V2V) applications with everyday drivers in what it describes as 'normal operational scenarios'. These Driver Clinics are being carried out at six locations across the US and together with the subsequent model deployment beginning in 2012,
  • Gig economy drivers and riders at increased risk of collisions, warns UCL
    September 3, 2018
    Self-employed courier or taxi drivers who get their work through apps could be more likely to be involved in a collision, says a new study. The University College London (UCL) research found 63% of ‘gig’ economy respondents – who are not paid a salary - are not provided with safety training about managing risks on the road. The emerging issues for management of occupational road risk in a changing economy: A survey of gig economy drivers, riders and their managers also revealed 65% of drivers did not