Strong and efficient algorithm in real time eye tracking system has been an ultimate and thought-provoking problem for computer vision. This so because most studies have tried to characterized eye using mainly pupil and iris. These features need the full cooperation of the individual making computing information impractical. Secondly, computing information using these features is subjective and also depends on the race. All these methods do not consider the individual making it general as the individual has blink cycle and for that matter different levels of fatigue rendering previous works inaccurate, hence this study. In this paper, a methodology for establishing the blink cycle of the eye is presented. The paper employs a method, where individual’s face is captured by a camera by receiving video sequence which are streamed into frames and then transformed into RGB. Haar classifiers are used to detect eyes region and eyelid feature. The eyes are detected to be either open or closed at a particular period by using thresholding and equations regarding the symmetry of human face. The eye region is processed to ascertain certain attributes of eyelid movement. General Terms Image Processing, Algorithms, Computer Vision
[1]
Hala H. Zayed,et al.
Adaptive Real Time Eye-Blink Detection System
,
2014
.
[2]
R. Mardiyanto,et al.
Real Time Blinking Detection Based on Gabor Filter
,
2010
.
[3]
Kongqiao Wang,et al.
Eye blink detection based on eye contour extraction
,
2009,
Electronic Imaging.
[4]
Normand Teasdale,et al.
Real-time eye blink detection with GPU-based SIFT tracking
,
2007,
Fourth Canadian Conference on Computer and Robot Vision (CRV '07).
[5]
Horst Bischof,et al.
Eye Blink Based Fatigue Detection for Prevention of Computer Vision Syndrome
,
2009,
MVA.
[6]
Rupal Khilari.
Iris tracking and blink detection for human-computer interaction using a low resolution webcam
,
2010,
ICVGIP '10.
[7]
Behrouz Far,et al.
Embedded Real Time Blink Detection System for Driver Fatigue Monitoring
,
2015,
SEKE.
[8]
Kohei Arai,et al.
Comparative Study on Blink Detection and Gaze Estimation Methods for HCI, in Particular, Gabor Filter Utilized Blink Detection Method
,
2011,
2011 Eighth International Conference on Information Technology: New Generations.