Skip to content

QualityPoint Technologies News

Emerging Technologies News

Menu
  • About Us
  • Technology
  • Medical
  • Robots
  • Artificial Intelligence (AI)
  • 3D Printing
  • Contact Us
Menu

Huge Discount Offer: 14 ebooks + 2 courses

New software can detect when people text and drive

Posted on September 9, 2017

Computer algorithms developed by engineering researchers at the University of Waterloo 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 at Waterloo, said that information could be used to improve road safety by warning or alerting drivers when they are dangerously distracted. And 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, a University Research Chair and director of the Centre for Pattern Analysis and Machine Intelligence (CPAMI) at Waterloo.

Algorithms at the heart of the technology were trained using machine-learning techniques to recognize 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.

Another research project at CPAMI is exploring the use of sensors to measure physiological signals such as eye-blinking rate, pupil size and heart-rate variability to help determine if a driver is paying adequate attention to the road.

Karray’s research — done in collaboration with PhD candidates Arief Koesdwiady and Chaojie Ou, and post-doctoral fellow Safaa Bedawi — was recently presented at the 14th International Conference on Image Analysis and Recognition in Montreal.

News Source: https://www.eurekalert.org/pub_releases/2017-09/uow-nsc083117.php

Related AI Videos

Artificial intelligence produces Realistic Sounds that fool Humans

Microscope uses Artificial Intelligence to find cancer cells more efficiently

DJI’s Phantom 4 Drone uses Artificial Intelligence for avoiding Obstacles

Watch more AI videos at https://www.youtube.com/playlist?list=PLK2ccNIJVPpBqKHdezLeaUzIp85DxFu7_

Share

Related News:

  1. IBM and MIT establish new MIT–IBM Watson AI Lab
  2. System uses ‘deep learning’ to detect cracks in nuclear reactors
  3. AI System “IDA” helps Farmers to monitor Cows
  4. New AI System Could Teach Robots to do Household Chores
Master RAG ⭐ Rajamanickam.com ⭐ Bundle Offer ⭐ Merch ⭐ AI Course

  • Bundle Offer
  • Hire AI Developer

Latest News

  • MIT Researchers Unveil New Framework to Test AI Privacy Risks in Clinical Models January 6, 2026
  • MIT Researchers Develop AI-Driven Robot That Builds Furniture From Text Prompts December 17, 2025
  • Kling O1: A New Breakthrough in AI Video Creation December 4, 2025
  • Coactive: Teaching AI to See and Understand Visual Content June 10, 2025
  • Harvard Sues Trump Administration Over International Student Ban May 23, 2025
  • Stanford Researchers Develop AI Agents That Simulate Human Behavior with High Accuracy May 23, 2025
  • ​Firebase Studio: Google’s New Platform for Building AI-Powered Applications April 11, 2025
  • MIT Researchers Develop Framework to Enhance LLMs in Complex Planning April 7, 2025
  • MIT and NVIDIA Unveil HART: A Breakthrough in AI Image Generation March 25, 2025
  • Can LLMs Truly Understand Time Series Anomalies? March 18, 2025

Pages

  • About Us
  • Basics of 3D Printing
  • Key Innovations
  • Know about Graphene
  • Privacy Policy
  • Shop
  • Contact Us

Archives

Developed by QualityPoint Technologies (QPT)

QPT Products | eBook | Privacy

Timesheet | Calendar Generator

©2026 QualityPoint Technologies News | Design: Newspaperly WordPress Theme