FINGERPRINT IMAGE ENHANCEMENT USING FILTERING TECHNIQUES.
- Senior Lecturer, Mongolian University of Science and Technology.
- Head of Center for Digital Safety & Security, Austrian Institute of Technology.
- Abstract
- Keywords
- References
- Cite This Article as
- Corresponding Author
Detecting whether a fingerprint is present in an image is of fundamental importance in capture devices and in the maintenance of existing fingerprint-based biometric systems. Biometric systems and fingerprint recognition systems have become very widespread in the recent years, both in mobile devices and through increased usage in border controls, electronic national identification systems, controlled work duration time and so on. Any biometric system is that the quality of the data that enters the system is of the highest possible quality to facilitate ease. But the system error rates are sensitive to the quality of the enrolled sample due to subsequent interactions with the biometric system, results in a comparison being made against the enrolled sample. If the enrolled sample is of poor quality then the comparisons are more likely to result in a false non-match. We present a fingerprint enhancement algorithm, which can adaptively improve the clarity of ridge and furrow structures of input fingerprint images based on the estimated local ridge orientation and frequency. In this research shows the Gaussian, Median, Mean, Minimum, Maximum and Variance filtering techniques, Canny, Robert, Prewitt, Log and Fuzzy edge detection methods, enhancement Sharpen techniques, Morphological thinning methods, combined their methods and some experiment results in fingerprint images. The enhancement, Sharpen techniques, Canny edge detection, Gaussian filter and morphological thinning methods combined gave the good result and much more reduced noise, increased edges, lightning and enhanced fingerprint image. The morphological thinning method gave the good result our experiments fingerprint images.
- Anil K. Jain (2006): Fundamentals of Digital Image Processing. Prentice Hall, Englewood Cliff, N.J 07632l, pp. 1-35, https://jimlecture.files.wordpress.com/2017/01/chp07_anil.pdf
- Biometrics History- Homeland Security Digital Library (2006): National Science and Technology Council & Committee on Technology Council, https://www.hsdl.org/?view&did=463907, pp. 1-27
- David Maltoni, Dario Maio, Anil K. Jain and Salil Prabhakar (2009): Handbook of Fingerprint Recognition
- David Marr, Ellen Catherine Hildreth (1980):?Theory of Edge Detection. In?Proceedings of the Royal Society of London, B 207, pp. 187?217
- Daria Mario and Davide Maltoni (1997): Direct Gray-Scale Minutiae Detection in Fingerprints. IEEE Transaction on pattern analysis and machine intelligence, Vol.19, №1, January, pp. 27-40
- Newham (1995): The Biometric Report. SJB Services, New York
- Ganchimeg (2015): History Document Image Background Noise and Removal Methods. International Journal of Knowledge Content Development & Technology, Vol.5, №2, December, pp. 11-24
- Ganchimeg, H. Leopold (2019): A Study of History Document Fingerprint Image Enhancement and Tinning Algorithm. International Journal ofAdvanced Research in Science, Engineering and Technology, Vol.6, №3, pp. 8338-8345, 2019
- Ganchimeg (2014): Comparison of Image Edge Detection Techniques. The 5th International Conference on Creative Science and Technology ICICT-2014, MUSTAK 2014, pp. 236-240
- Ganchimeg, R. Turbat (2014): Detection of Edges in Color Images. Journal of IEEK Transactions on Smart Processing and Computing, Vol.3, №6, Dec30, 2014, pp. 345-352
- C. Lee and R. E. Gaensslen (1991); Advances in Fingerprint Technology. Elsevier New York, http://index-of.co.uk/Tutorials-2/Advances%20in%20Fingerprint%20Technology.pdf
- H S Shukla, Narendra Kumar and R P Tripathi (2014): Gaussian Noise Filtering Techniques using New Median Filter. International Journal of Computer Applications (0975-8887), Vol.95, №12, June, pp. 12-15
- Herbert Taub and Donald L. Schilling (1986): Principles of Communication Systems, second edition, Library of Congress Cataloging in Publication Data, RPX-Farmwald Ex. 1042, pp. 1-7
- Jong-Sen Lee (1980): Digital Image Enhancement and Noise Filtering by use of Local Statistics. IEEE Transaction on pattern analysis and machine intelligence, Vol.PAMI-2, №2, March, pp. 165-168
- John Canny (1986): A Computational Approach to Edge Detection. IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. PAMI-8, No. 6, November, pp. 679-698, doi: 10.1109/TPAMI.1986.4767851
- Lin Hong, Yifei Wan and Anil Jain (1998): Fingerprint Image Enhancement: Algorithm and Performance Evaluation. IEEE Transaction on pattern analysis and machine intelligence, Vol.20, №8, August, pp.777-789, doi: 1109/34.709565
- Hong, A. K. Jain, S. Pankanti and R. Bolle (1996): Fingerprint Enhancement: In Proceedings of the first IEEEWACV, pp. 202-207, Sarasota, FL
- Mayank Tripathi, Deepak Shrivastava (2015): Designing of Fingerprint Recognition System Using Minutia Extraction and Matching. IJCSET (ijcset.net), Vol. 5, Issue 5, 1 May, pp. 20-126
- Rashmi, Mukesh Kumar and Rohini Saxena (2013): Algorithm and technique on various edge detection: A survey. Signal & Image Processing: An International Journal (SIPIJ), Vol.4, №3, June, pp. 65-75
- Sangram Bana and Davinder Kaur (2011): Fingerprint Recognition using Image Segmentation. International journal of advanced engineering sciences and technologies, 5, Issue №1, pp. 012-023
- Yao Tang, Fei Gao and Jufu Feng (2017): Latent fingerprint minutia extraction using fully convolutional network. Key Laboratory of Machine Perception (MOE), School of EECS, Peking University, arxiv: 1609.09850v2 [cs.CV], Sep
[Ganchimeg.G and Leopold.H. (2019); FINGERPRINT IMAGE ENHANCEMENT USING FILTERING TECHNIQUES. Int. J. of Adv. Res. 7 (May). 637-645] (ISSN 2320-5407). www.journalijar.com
author