Skip to main content
Proceedings - 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, CVPR 2005Volume II, 2005, Article number 1467603, Pages 1206-12072005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, CVPR 2005; San Diego, CA; United States; 20 June 2005 through 25 June 2005; Category numberP2372; Code 67474

Driver state monitor from DELPHI(Conference Paper)

  • Edenborough, N.,
  • Hammoud, R.,
  • Harbach, A.,
  • Ingold, A.,
  • Kisačanin, B.,
  • Malawey, P.,
  • Newman, T.,
  • Scharenbroch, G.,
  • Skiver, S.,
  • Smith, M.,
  • Wilhelm, A.,
  • Witt, G.,
  • Yoder, E.,
  • Zhang, H.
  • View Correspondence (jump link)
  Save all to author list
  • Delphi Electronics and Safety, United States

Abstract

We present an automotive-grade, real-time, vision-based Driver State Monitor, Upon detecting and tracking the driver's facial features, the system analyzes eye-closures and head pose to infer his/her fatigue or distraction. This information is used to warn the driver and to modulate the actions of other safety systems. The purpose of this monitor is to increase road safety by preventing drivers from falling asleep or from being overly distracted, and to improve the effectiveness of other safety systems.

Indexed keywords

Engineering controlled terms:Accident preventionFace recognitionLight modulationReal time systemsTracking (position)
Engineering uncontrolled termsDELPHIRoad safetyVision-based Driver State Monitor
Engineering main heading:Computer vision
  • ISBN: 0769523722;978-076952372-9
  • Source Type: Conference Proceeding
  • Original language: English
  • DOI: 10.1109/CVPR.2005.135
  • Document Type: Conference Paper
  • Sponsors: IEEE Computer Society
  • Publisher: IEEE Computer Society

  Edenborough, N.; Delphi Electronics and Safety, United States
© Copyright 2021 Elsevier B.V., All rights reserved.

Cited by 24 documents

Michelaraki, E. , Katrakazas, C. , Kaiser, S.
Real-time monitoring of driver distraction: State-of-the-art and future insights
(2023) Accident Analysis and Prevention
Perkins, E. , Sitaula, C. , Burke, M.
Challenges of Driver Drowsiness Prediction: The Remaining Steps to Implementation
(2023) IEEE Transactions on Intelligent Vehicles
Haider, A. , Guragain, B.
Challenges and Future Trends of EEG as a Frontier of Clinical Applications
(2023) IEEE International Conference on Electro Information Technology
View details of all 24 citations
{"topic":{"name":"Drowsiness Detection; Support Vector Machine; Image Processing","id":1432,"uri":"Topic/1432","prominencePercentile":98.74639,"prominencePercentileString":"98.746","overallScholarlyOutput":0},"dig":"c26677aa463c596fccbaf955866f452aadb9e9a885abf5a6be8a1d51f7acb007"}

SciVal Topic Prominence

Topic:
Prominence percentile: