Browse > Article
http://dx.doi.org/10.9708/jksci.2011.16.8.095

Pseudo Feature Point Removal using Pixel Connectivity Tracing  

Kim, Kang (Dept. of Tourism Information Processing, Kangwon Tourism University)
Lee, Keon-Ik (Dept. of Computer Science, Kangwon University)
Abstract
In this paper, using pixel connectivity tracking feature to remove a doctor has been studied. Feature extraction method is a method using the crossing. However, by crossing a lot of feature extraction method sis a doctor. Extracted using the method of crossing the wrong feature to remove them from the downside and the eight pixels around the fork to trace if it satisfies the conditions in the actual feature extraction and feature conditions are not satisfied because the doctor was removed. To evaluate the performance using crossing methods and extracted using pixel connectivity trace was compared to the actual feature, the experimental results using pixel connectivity trace arcuate sentence, croissants sentence, sentence the defrost feature on your doctor about47%, respectively, 40%, 30%were found to remove.
Keywords
Direction; Connectivity; Pseudo Feature Point;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Keon-LK Lee, Kang Kim, "Pseudo feature point re oval using 8-neighbors connection sum", Korea institute of computer and Information Winter Conference, Vol 18-1, pp. 117-120, January, 2010.
2 Lee Eun-jung, "the fingerprint image and fingerprint classifi cation through a combination of directional features", Hanshin University Graduate School Master's Thesis, 2010.
3 Kaohsiung, "can be changed for user authentication of fingerprint generation techniques". soonchun hyang University Graduate School Master's Thesis, 2010.
4 Lee Keon-Ik, "Fingerprint recognition features for improved detection RPAOC Study", Kanto Univer sity doctoral dissertation, 2005.
5 Marius Tico and Pauli Kuosmanen, "An Algorithm for Fingerprint Image Postprocessing", Proceedings of the Conference record of The Thrity-Fourth Asilomar Conference on Signals, Systems & Computers - Volume 2, pp. 1735-1739, 2000.
6 Son gmyeong-cheol, "Fingerprint Reference Point De tection Using orientation information and fingerp int authentication system", Korea Univer sity Master Thesis, 2002.
7 jang dong-hyeok,"Implementation of Digital Image Processing", Information Gate, 2002
8 Marius Tico and Eero Immonen and Pauli Ramo and pauli Kuosmanen and Jukka Saarinen, "Fingerprint Recognition Using Wavelet Features", Proceedings of the IEEE International Symposiumon Circuits and Systems, Vol. 2, pp. 21-24, 2001.
9 Marius Tico and Pauli Kuosmanen, "An Algorithm for Fingerprint Image Postprocessing", Proceedings of the Conference record of The Thrity-Fourth Asilomar Conference on Signals, Systems & Computers - Volume 2, pp. 1735-1739, 2000
10 YuKo Mizuhara. AKira Hayashi, Nobuo Suematsu, "Embedd ing of time series data by using dynamic time warping distances," Systems and Computers in Japan. Vol 37, No 3 pp. 1-9, 2006.   DOI   ScienceOn
11 Zhu Hao, Qianwei Lei, "Vision-Based Interface; Using Face and Eye Blinking Tracking with Camera", Second International Symposium on Intelligent Information Technology Application, 2008.
12 Geng Zhang, Nanning Zheng, Chao Cui, Yuzhen Ya and Zejian yuan "An Efficient Road Detection Method in Noisy Urban Environment" IEEE Intellgent Vehicles Symposium 03 June, 2009.
13 Seong young-jin, kimkyung-Hwan, "Quality estima tion and classification of minutiae-based fingerprint matching algorithm using a Delaunary Triangulation", Institute of Multimedia Chapter 13 No. 4, 2010.
14 W. Chen and Y. Gao, "A minutiae-based fingerprint mat hching alogorithm using phase correlation", in 9th Biennial Conference of the Australian Pattern Recognition Society on Digital Image Computing Techniques and Applications, pp. 233-238, 2007.
15 Engin Avci, Derya Avci, "An expert systembased on fuzzy entropy for automatic threshold selection in image processing", Expert Systems with Applications, Vol, 36, pp. 3077-3085, 2009.   DOI   ScienceOn