[go: up one dir, main page]
More Web Proxy on the site http://driver.im/

Daza et al., 2011 - Google Patents

Drowsiness monitoring based on driver and driving data fusion

Daza et al., 2011

View PDF
Document ID
7726650745252280972
Author
Daza I
Hernández N
Bergasa L
Parra I
Yebes J
Gavilán M
Quintero R
Llorca D
Sotelo M
Publication year
Publication venue
2011 14th International IEEE Conference on Intelligent Transportation Systems (ITSC)

External Links

Snippet

This paper presents a non-intrusive approach for monitoring driver drowsiness, based on driver and driving data fusion. The Percentage of Eye Closure (PERCLOS) is used to estimate the driver's state. The PERCLOS is computed on real time using a stereo vision …
Continue reading at invett.aut.uah.es (PDF) (other versions)

Classifications

    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Detecting, measuring or recording for diagnostic purposes; Identification of persons
    • A61B5/16Devices for psychotechnics; Testing reaction times; Devices for evaluating the psychological state
    • A61B5/18Devices for psychotechnics; Testing reaction times; Devices for evaluating the psychological state for vehicle drivers or machine operators

Similar Documents

Publication Publication Date Title
Daza et al. Drowsiness monitoring based on driver and driving data fusion
Garcia et al. Vision-based drowsiness detector for real driving conditions
Sayed et al. Unobtrusive drowsiness detection by neural network learning of driver steering
Eskandarian et al. Evaluation of a smart algorithm for commercial vehicle driver drowsiness detection
Wang et al. Driver fatigue detection: a survey
CA2649731C (en) An unobtrusive driver drowsiness detection method
García et al. Vision-based drowsiness detector for a realistic driving simulator
Cheng et al. Driver drowsiness detection based on multisource information
Gao et al. Evaluating driving fatigue detection algorithms using eye tracking glasses
Yang et al. Real-time driver cognitive workload recognition: Attention-enabled learning with multimodal information fusion
Costa et al. Detecting driver’s fatigue, distraction and activity using a non-intrusive ai-based monitoring system
CN110796207A (en) Fatigue driving detection method and system
CN101491443A (en) Relational model of driver fatigue and vehicle riding trail
CN111753674A (en) Fatigue driving detection and identification method based on deep learning
Choudhary et al. A survey paper on drowsiness detection & alarm system for drivers
Sena et al. Studying the influence of cognitive load on driver's performances by a Fuzzy analysis of Lane Keeping in a drive simulation.
Wang et al. Modeling and recognition of driving fatigue state based on RR intervals of ECG data
Liu et al. A review of driver fatigue detection: Progress and prospect
Sandberg et al. Particle swarm optimization of feedforward neural networks for the detection of drowsy driving
Salzillo et al. Evaluation of driver drowsiness based on real-time face analysis
Baccour et al. Camera-based driver drowsiness state classification using logistic regression models
Wang et al. Driver fatigue detection technology in active safety systems
Yang et al. Driver drowsiness detection through a vehicle's active probe action
Wu et al. Estimating driving performance based on EEG spectrum and fuzzy neural network
He et al. Estimation of driver’s fatigue based on steering wheel angle