Fingerprint Pattern of Matching Family With GLCM Feature

Abstract

In this study, fingerprint pattern matching is done to find out whether there are similarities between parent and child fingerprint patterns. An important step in fingerprint matching is the search and matching of fingerprint patterns. Fingerprint data used by 30 families from different families. The method used in fingerprint feature extraction is GLCM. The GLCM angle used is 0o, and the features used are contrast, homogeneity, correlation, and energy. From the results obtained GLCM is well used in fingerprint texture analysis. This study proves that the proposed method for matching fingerprints on parents and children gets the most dominant pattern is the loop pattern.

Keywords

fingerprint, GLCM, pattern, texture, analysis.
Full Paper:

References

Soman M., A, Avadhani R, Jacob M, Nallathamby R.Study of Fingerprint Patterns in Relationship with Blood group and Gender. Research Journal of Forensic Sciences. 2013; 1(1): 15-17.

Chen W, Gao Y. A Minutiae-based Fingerprint Matching Algorithm Using Phase Correlation. Digital Image Computing Techniques and Applications. 2007; 233-238.

Mohaniah P, Sathyanarayana, GuruKumar L. Image Texture Feature Extraction Using GLCM Approach. International Journal of Scientific and Research Publications. 2013; 3(5): 1-5.

Pathak B, Barooah D. Texture Analysis Based on the Gray-Level Co-occurrence Matrix Considering Possible Orientations. International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering. 2013; 2(9): 4206-4212.

Mishra A, Maheshwari P. An Efficient System for Fingerprint Finger Print Matching and Classification. International Journal of Advanced Research in Computer Science and Software Engineering. 2013; 3(11): 295-300.

K.K B, Vijayakumar. Fingerprint Matching by Extracting GLCM Features. International Conference & Workshop on Recent Trends in Technology Proceedings published in International Journal of Computer ApplicationsĀ® (IJCA),(TCET). 2012. 30-34

Verma P, Bahendwar Y, Sahu A, Dubey A. Feature Extraction Algorithm of Fingerprint Recognition. International Journal of Advanced Research in Computer Science and Software Engineering. 2012; 2(10): 292-297.

Abraham A.T, M. Y. K. Genotyping-Wavelet Approach. International Journal of Science and Research (IJSR). 2013; 4(2): 1025-1027.

Suharjito, Imran B, Girsang A S. Family Relationship Identification by Using Extract Feature of Gray Level Co-occurrence Matrix (GLCM) Based on Parents and Children Fingerprint. International Journal of Electrical and Computer Engineering (IJECE). 2017; 7(5): 2738-2745.

Matsuyama N, Ito Y. The Frequency of Fingerprint Type in Parents of Children with Trisomy 21 in Japan.Journal of Physiological Anthropology. 2006: 15-21.

Aburas A A, Rahiel S A. Fingerprint Patterns Recognition System Using Huffman Coding. Proceedings of the World Congress on Engineering. London, U.K. 2008; Vol.III.

DOI:Ā http://dx.doi.org/10.12928/telkomnika.v16i3.8534

Tinggalkan Balasan

Alamat email Anda tidak akan dipublikasikan. Ruas yang wajib ditandai *

9 + 13 =