DOI QR코드

DOI QR Code

Image Analysis Fuzzy System

  • Abdelwahed Motwakel (Department of Computer and Self Development, Preparatory Year Deanship, Prince Sattam bin Abdulaziz University) ;
  • Adnan Shaout (The Electrical and Computer Engineering Department, the University of Michigan -Dearborn) ;
  • Anwer Mustafa Hilal (Department of Computer and Self Development, Preparatory Year Deanship, Prince Sattam bin Abdulaziz University) ;
  • Manar Ahmed Hamza (Department of Computer and Self Development, Preparatory Year Deanship, Prince Sattam bin Abdulaziz University)
  • Received : 2024.01.05
  • Published : 2024.01.30

Abstract

The fingerprint image quality relies on the clearness of separated ridges by valleys and the uniformity of the separation. The condition of skin still dominate the overall quality of the fingerprint. However, the identification performance of such system is very sensitive to the quality of the captured fingerprint image. Fingerprint image quality analysis and enhancement are useful in improving the performance of fingerprint identification systems. A fuzzy technique is introduced in this paper for both fingerprint image quality analysis and enhancement. First, the quality analysis is performed by extracting four features from a fingerprint image which are the local clarity score (LCS), global clarity score (GCS), ridge_valley thickness ratio (RVTR), and the Global Contrast Factor (GCF). A fuzzy logic technique that uses Mamdani fuzzy rule model is designed. The fuzzy inference system is able to analyse and determinate the fingerprint image type (oily, dry or neutral) based on the extracted feature values and the fuzzy inference rules. The percentages of the test fuzzy inference system for each type is as follow: For dry fingerprint the percentage is 81.33, for oily the percentage is 54.75, and for neutral the percentage is 68.48. Secondly, a fuzzy morphology is applied to enhance the dry and oily fingerprint images. The fuzzy morphology method improves the quality of a fingerprint image, thus improving the performance of the fingerprint identification system significantly. All experimental work which was done for both quality analysis and image enhancement was done using the DB_ITS_2009 database which is a private database collected by the department of electrical engineering, institute of technology Sepuluh Nopember Surabaya, Indonesia. The performance evaluation was done using the Feature Similarity index (FSIM). Where the FSIM is an image quality assessment (IQA) metric, which uses computational models to measure the image quality consistently with subjective evaluations. The new proposed system outperformed the classical system by 900% for the dry fingerprint images and 14% for the oily fingerprint images.

Keywords

Acknowledgement

The authors would like to thank the Deanship of Scientific Research at Prince Sattam Bin Abdulaziz University, Alkharj, Saudi Arabia for the assistance.

References

  1. Li, Z., Han, Z., & Fu, B. (2009, December). A novel method for the fingerprint image quality evaluation. In Computational Intelligence and Software Engineering, 2009. CiSE 2009. International Conference on (pp. 1-4). IEEE.
  2. Saenko, A., Polte, G., & Musalimov, V. (2012, June). Image enhancement and image quality analysis using fuzzy logic techniques. In Communications (COMM), 2012 9th International Conference on (pp. 95-98). IEEE.
  3. Yun, E. K., & Cho, S. B. (2006). Adaptive fingerprint image enhancement with fingerprint image quality analysis. Image and Vision Computing, 24(1), 101-110. https://doi.org/10.1016/j.imavis.2005.09.017
  4. Mahashwari, T., & Asthana, A. (2013). Image enhancement using fuzzy technique. International Journal of Research in Engineering Science and Technology, 2(2), 1-4.
  5. Selvi, M., & George, A. (2013, July). FBFET: Fuzzy based fingerprint enhancement technique based on adaptive thresholding. In Computing, Communications and Networking Technologies (ICCCNT), 2013 Fourth International Conference on (pp. 1-5). IEEE.
  6. Syam, R., Hariadi, M., & Purnomo, M. H. (2010). Determining the Standard Value of Acquisition Distortion of Fingerprint Images Based on Image Quality. Journal of ICT Research and Applications, 4(2), 115-132.
  7. Matkovic, K., Neumann, L., Neumann, A., Psik, T., & Purgathofer, W. (2005). Global Contrast Factor-a New Approach to Image Contrast. Computational Aesthetics, 2005, 159-168.
  8. Bloch, I. (2009). Duality vs. adjunction for fuzzy mathematical morphology and general form of fuzzy erosions and dilations. Fuzzy Sets and Systems, 160(13), 1858-1867. https://doi.org/10.1016/j.fss.2009.01.006
  9. Bloch, I. (2006). Spatial reasoning under imprecision using fuzzy set theory, formal logics and mathematical morphology. International Journal of Approximate Reasoning, 41(2), 77-95. https://doi.org/10.1016/j.ijar.2005.06.011
  10. Pahsa, A. (2006). Morphological image processing with fuzzy logic. Journal of Aeronautics and space Technologies, 2(3), 27-34.
  11. Sivanandam, S. N., Sumathi, S., & Deepa, S. N. (2007). Introduction to fuzzy logic using MATLAB (Vol. 1). Berlin: Springer.
  12. Zhang, L., Zhang, L., Mou, X., & Zhang, D. (2011). FSIM: A feature similarity index for image quality assessment. IEEE transactions on Image Processing, 20(8), 2378-2386. https://doi.org/10.1109/TIP.2011.2109730
  13. Das, S., Saikia, J., Das, S., & Goni, N. (2015). A Comparative Study of Different Noise Filtering Techniques in Digital Images. International Journal of Engineering Research and General Science, 3(5), 180-191.
  14. Chen, Y., Dass, S. C., & Jain, A. K. (2005, July). Fingerprint quality indices for predicting authentication performance. In AVBPA (Vol. 3546, pp. 160-170).
  15. Zahedi, M., & Ghadi, O. R. (2015). Combining Gabor filter and FFT for fingerprint enhancement based on a regional adaption method and automatic segmentation. Signal, Image and Video Processing, 9(2), 267-275. https://doi.org/10.1007/s11760-013-0436-3