Minutea Object Extraction in Fingerprint Image Using Morphological Methods and Gabor Filters Ekstraksi Objek Minutea Pada Citra Sidik Jari Dengan Metode Morfologi dan Gabor Filter

Main Article Content

Julius santony

Abstract

Minutiae is part of the fingerprint, which is the point where the fingerprint line stops or branches, which can be observed by scanning at a resolution of 500 pp. a fingerprint has minutiae that range from 50-100 pieces scattered throughout the surface of the fingerprint. To clarify the fingerprint can be done by extracting the minutiae contained in the fingerprint. With this extraction process, fingerprint images can be clarified, so identification of a fingerprint will be easy to do. This research extracts minutiae objects in the fingerprint image, so that the fingerprint line object can be seen clearly. The first stage in this research is object detection and edge detection using morphological methods. The next step is the extraction of minutiae objects with the gabor filter and minutiae extraction . The results obtained can display the fingerprint line of the fingerprint image clearly. From the results of testing 10 fingerprint images proved that the minutiae object in the image can be extracted, so that the fingerprint line of the image is clearer than the original image

Downloads

Download data is not yet available.

Article Details

How to Cite
santony, J. (2020). Minutea Object Extraction in Fingerprint Image Using Morphological Methods and Gabor Filters. Jurnal KomtekInfo, 7(1), 32-40. https://doi.org/https://doi.org/10.35134/komtekinfo.v7i1.1212
Section
Umum
Abstract viewed = 23 times
Download downloaded = 23 times

References

[1] S. Guglani and E.P.S. Bhullar,“A New False Minutia Removal Based Fingerprint Identification Technique”. International Journal of Advanced Research in Computer Science (IJARCS), Volume 6, Issue 6, 17-19, 2015.
[2] P.K. Bose and M.J. Kabir, “Fingerprint: A Unique and Reliable Method for Identification”, Journal of Enam Medical College ,Volume 7, Issue 1, 29-34, 2017.
[3] K. Cao and A.K. Jain, “Automated Latent Fingerprint Recognition”, IEEE Transactions on Pattern Analysis and Machine Intelligence, Volume 41, Issue 4, 788-800, 2019.
[4] N. Yanti, F.Z. Rachman, N. Jamal, E. Purwanto and Fachrurozy,“Jaringan Syaraf Tiruan Untuk Pengenalan Citra Sidik Jari Pada Smart”, Jurnal Teknologi Informasi dan Ilmu Komputer (JTIIK), Volume 5, Issue 5, 597-604, 2018.
[5] I.R. Wijaya, U.N. Wisesty and S.A. Faraby,“Analisis dan Implementasi Metode Gabor Filter dan Support Vector Machine pada Klasifikasi Sidik Jari”, Indonesian Journal of Computing (Indo-JC), Volume 2, Issue 2, 37-46, 2017.
[6] N. Kahraman,Z.G.C. Taskiran andM. Taskiran, “Novel Feature Extraction Methodology with Evaluation in Artificial Neural Networks Based Fingerprint Recognition System”, Original scientific paper,Volume 1, Issue 1, 112-119, 2018.
[7] S. Chavan, P. Mundada and D. Pal, ” Fingerprint Authentication Using Gabor Filter Based Matching Algorithm”, International Conference on Technologies for Sustainable Development(ICTSD), Mumbai, India. Feb 04-06. DOI :10.1109/ICTSD.2015.7095910, 2015.
[8] D. Probst and J.L. Reymond, “A Probabilistic Molecular Fingerprint for Big Data Settings”, Journal of Cheminformatics, 1-12, 2018.
[9] J. Santony and J. Na`am, “InfiltrateObject Extraction in X-rayImage by using Math-Morphology.International Journal on Advanced Science, Engineering and Information Technology (IJASEIT)”, Volume 6, Issue 2, 239-244, 2016.
[10] J. Na`am, J. Santony, Yuhandri, Sumijan and G.W. Nurchayo, “Enlarge Medical Image using Line-Column Interpolation (LCI) Method”, International Journal of Electrical and Computer Engineering(IJECE), Volume 8, Issue 5, 3620-3626, 2018.
[11] P.Gayathiri,M. Punithavalli “Partial Fingerprint Recognition of Feature Extraction and Improving Accelerated KAZE Feature Matching Algorithm”, International Journal of Innovative Technology and Exploring Engineering (IJITEE), Volume 8, Issue 10, 3685-3690, 2019.