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

  • Tesla car crash in California kills driver while running on autopilot
    April 3, 2018
    A Tesla vehicle driving in autopilot mode crashed into a roadside barrier and caught fire in a test carried out in California – according to a report by the BBC.
  • IRD complements WIM with tyre under-inflation detection
    May 8, 2015
    To complement its existing WIM offering, IRD has introduced a system to detect under-inflated and flat tyres at highway speeds. Tyre inflation pressure has both safety and economic impacts for road users and none more so than with commercial vehicles. An underinflated tyre has decreased directional control, increased risk of catastrophic failure, and negatively impacts tyre life and fuel economy. In June 2014 the USDOT published Large Truck and Bus Crash Facts 2012 in which the Federal Motor Carrier Safety
  • Consumer Watchdog calls on NHTSA to strength rules on autonomous cars
    April 11, 2016
    The US Consumer Watchdog has called on the National Highway Traffic Safety Administration (NHTSA) to require a steering wheel, brake and accelerator so a human driver can take control of a self-driving robot car when necessary in the guidelines it is developing on automated vehicle technology. In comments for a NHTSA public meeting about automated vehicle technology, John M. Simpson, Consumer Watchdog's privacy project director, also listed ten questions he said the agency must ask Google about its self-
  • Self-driving cars ‘a US$87 billion opportunity in 2030’
    May 22, 2014
    The latest research from Lux Research indicates that automakers and technology developers are closer than ever to bringing self-driving cars to market, with basic Level 2 autonomous behaviour already coming to market, in the form of relatively modest self-driving features like adaptive cruise control, lane departure warning, and collision avoidance braking. With these initial steps, automakers are already on the road to some level of autonomy, but costs remain high in many cases. It is the higher levels