The Technology Research for the Extraction of Human Eyes Feature

Article Preview

Abstract:

Using the method which is similar to the eye region selection to compute the length of long axis and the short axis of human eyes, reduce the errors caused by the space between the straight lines in Hough Transform. Using Generalized Hof Transform method to extract eyes perimeter, eliminate the interference of the lights, which is more accurate than using 33 template method. With using the region growing method, set an accumulator to calculate the pixels difference value of the seed points and its 33 neighbourhood (the absolute value of the cumulative numbers of the point is less than the threshold) is the human eye area. With those methods, we can extract the characteristics of human eyes.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

2456-2459

Citation:

Online since:

September 2013

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] K. Sung,T . Posslo, Example-based learning for view based human face detection, IEEE Trans Pattem Anlysis and Machine Intelligence,vol. 20, pp.39-51, Nov. (1999).

DOI: 10.1109/34.655648

Google Scholar

[2] Wang Yi, Zhao Zheng-jiao, Yang Shuo. Based on a sample of search and Hof transform area location algorithm, Infrared and Laser Engineering. 1999, pp.1-9.

Google Scholar

[3] D Linthicum, Enterptise application integration, USA: Addison-wesley, (1999).

Google Scholar

[4] Liu Wei, Ji Yu-bo. An improved eye feature detection methods, Journal of Liaoning Shihua University. pp.69-71. Nov. (2010).

Google Scholar

[5] Zhang Xiao-Lin. Imageedge detection technology, High Energy Density Physics. pp.69-71. Nov. (2007).

Google Scholar

[6] Ye Zhou-hai, Chen Fu-min. Generalize Hof transform and improved, Computer Aided Engineering, pp.53-54. Nov. (2006).

Google Scholar

[7] A Health, S Saekar, Sanomki T. Comparsion of Edge Detecrors: A Methodology and Initial Study. Computer Vision and Image. M.

Google Scholar

[8] Wan SY, Higgins W. Symmetric region growing . IEEE transactions on Image Processing, pp.1007-1008. Nov. (2003).

Google Scholar

[9] G C Feng, P C yuen. Multi-cues eye detection on gray intensity images.

Google Scholar