REDUCTION EYE RED DIGITAL IMAGE EFFECT WITH ALGORITHM INTENSITY COLOR CHECKING

  • Amran Sitohang UPI YPTK Padang
Keywords: Checking Color Intensity, Reduction., Image Processing

Abstract

The results of a photo either with a normal camera or a digital camera when taken from with high exposure to people, often produce red spots on the pupils of the term with the red-eye effect on digital photos. This of course causes the photos to be not good. With a particular software that functions as an image processor it can easily remove the red-eye just by using a tool called the red-eye effect that is reduced. So with this program the results of photos with a digital camera can be edited to eliminate the red-eye effect before printing. The red-eye effect is reduced using the intensity color checking algorithm in the process of replacing the red pixel images and then replacing them with grayish-black according to the resulting intensity process. Program that can reduce the red-eye effect with the intensity color checking algorithm by processing certain selected regions. The image results can then be printed or saved again in JPG format.

 

 

Downloads

Download data is not yet available.

References

A. Van Den Oord, N. Kalchbrenner, and K. Kavukcuoglu, “Pixel recurrent neural networks,” in 33rd International Conference on Machine Learning, ICML 2016, 2016.

R. Dahl, M. Norouzi, and J. Shlens, “Pixel Recursive Super Resolution,” in Proceedings of the IEEE International Conference on Computer Vision, 2017.

N. Kalchbrenner et al., “Video pixel networks,” in 34th International Conference on Machine Learning, ICML 2017, 2017.

E. Seeram, “Digital image processing.,” Radiol. Technol., 2004.

E. A. B. da Silva and G. V. Mendonca, “Digital Image Processing,” in The Electrical Engineering Handbook, 2005.

M. Egmont-Petersen, D. De Ridder, and H. Handels, “Image processing with neural networks- A review,” Pattern Recognition. 2002.

D. C. Tseng and C. L. Chien, “A cloud removal approach for aerial image visualization,” Int. J. Innov. Comput. Inf. Control, 2013.

R. Girisha and S. Murali, “Segmentation of motion objects from surveillance video sequences using partial correlation,” in Proceedings - International Conference on Image Processing, ICIP, 2009.

Y. L. Kuo, C. C. Ko, and J. Y. Lai, “Automated assessment in HER-2/neu immunohistochemical expression of breast cancer,” in 3CA 2010 - 2010 International Symposium on Computer, Communication, Control and Automation, 2010.

P. R. Gulve and P. N. M. Garad, “Hydrodynamic Cavitation as a Novel Approach for Treatment of Wastewater.,” Imp. J. Interdiscip. Res., 2016.

Published
2018-12-13
How to Cite
Sitohang, A. (2018). REDUCTION EYE RED DIGITAL IMAGE EFFECT WITH ALGORITHM INTENSITY COLOR CHECKING. INFOKUM, 7(1, Desembe), 22-27. Retrieved from http://infor.seaninstitute.org/index.php/infokum/article/view/21