Matching Minutiae Fingerprint Q-Learning Approach for Detail Coordination: Identifiable Mark Point

[{“box”:0,”content”:”[user_role]

n

n

n

n

n

By

n

n

    n t

  1. n
      [foreach 286]

    n

  2. n

n

n

Neha Tripathi, Khushbu Rai

n

n

    n t

  1. n[/foreach]

n

n

n

    [foreach 286] [if 1175 not_equal=””]n t

  1. Student, Professor,Computer Science and Engineering, Lakshmi Narayan College of Technology and Science, Computer Science and Engineering Lakshmi Narayan College of Technology and Science,Madhya Pradesh, Madhya Pradesh,India, India
  2. n[/if 1175][/foreach]

n

n

n

n

n

Abstract

nThe use of fingerprints for high precision recognition and identification of people is one of the most reliable biometric symbols because it is non-invasive. In this paper, we must propose an innovative approach to detect details on low contrast resolution image quality of fingerprint images. Existing algorithms are not very susceptible to sound and image excellence due to the lack of level of intensity. We recommend a reliable route to find fingerprints and then they can employ ML techniques to enhance image quality and choose the best course of action. For a sizable portion of the state, multi-layer concepts and intensive learning techniques are used before choosing the proper reward structure and research area for understanding the distribution of rewards. It is of great importance that the opportunities for the development of the content are easy and educational activities are of great importance. Experimental outcomes test indicates that the best way to extract Q-Learning details is to use a contemporary finger recognition system framework, which offers extremely viable or even significantly better results may generate than several cutting-edge techniques in terms of AROC, accuracy, and other metrics.

n

n

n

Keywords: Machine Learning, Minutiae Extraction, Convolution Neutral Network (CNN), Support Vector Machine (SVM), Principal Component Analysis (PCA), Deep Learning (DL)

n[if 424 equals=”Regular Issue”][This article belongs to International Journal of Information Security Engineering(ijise)]

n

[/if 424][if 424 equals=”Special Issue”][This article belongs to Special Issue under section in International Journal of Information Security Engineering(ijise)][/if 424][if 424 equals=”Conference”]This article belongs to Conference [/if 424]

n

n

nn


nn

Full Text

nnvar fieldValue = “[user_role]”;nif (fieldValue == ‘indexingbodies’) {ndocument.write(‘‘);ndocument.write(‘https://storage.googleapis.com/journals-stmjournals-com-wp-media-to-gcp-offload/2023/06/5483c054-matching-minutiae-fingerprint-q-learning-approach-1.pdf’);n} else if (fieldValue === ‘administrator’) {ndocument.write(‘‘);ndocument.write(”);n}else if (fieldValue === ‘ijise’) {n document.write(‘‘);n} else {n document.write(‘ ‘);n}nnn


n[if 379 not_equal=””]n

Browse Figures

n

n

[foreach 379]n

n[/foreach]n

nn

n

n[/if 379]n

n

References

n[if 1104 equals=””]n

  1. Maltoni, D. Maio, A. K. Jain, and S. Prabhakar, Handbook of fingerprint recognition. New York: Springer, 2009.
  2. Cappelli R, Ferrara M. A fingerprint retrieval system based on level-1 and level-2 features. Expert Systems with Applications. 2012 Sep 15;39(12):10465-78.
  3. Maltoni D, Maio D, Jain AK, Prabhakar S. Handbook of fingerprint recognition. London: springer; 2009 Apr 21. 494 p.
  4. Pankanti S, Prabhakar S, Jain AK. On the individuality of fingerprints. IEEE Transactions on pattern analysis and machine intelligence. 2002 Aug;24(8):1010-1025.
  5. Zhao Q, Jain AK. On the utility of extended fingerprint features: A study on pores. In2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition-Workshops 2010 Jun 13 (pp. 9-16). IEEE.
  6. Nogueira RF, de Alencar Lotufo R, Machado RC. Evaluating software-based fingerprint liveness detection using convolutional networks and local binary patterns. In2014 IEEE workshop on biometric measurements and systems for security and medical applications (BIOMS) Proceedings 2014 Oct 17 (pp. 22-29). IEEE.
  7. Wu CP, Li WC. Three-Dimensional Static Analysis of Nanoplates and Graphene Sheets by Using Eringen’s Nonlocal Elasticity Theory and the Perturbation Method. Computers, Materials & Continua. 2016 Sep 1;52(2).
  8. Jain AK, Chen Y, Demirkus M. Pores and ridges: High-resolution fingerprint matching using level 3 features. IEEE transactions on pattern analysis and machine intelligence. 2006 Nov 30;29(1):15-27.
  9. Lee W, Cho S, Choi H, Kim J. Partial fingerprint matching using minutiae and ridge shape features for small fingerprint scanners. Expert Systems with Applications. 2017 Nov 30;87:183-198.
  10. Zhang F, Xin S, Feng J. Combining global and minutia deep features for partial high-resolution fingerprint matching. Pattern Recognition Letters. 2019 Mar 1;119:139-47.
  11. Ismaeil AM. Fingerprint Image Quality Analysis and Enhancement Using Fuzzy Logic Technique (Doctoral dissertation, Sudan University of Science and Technology). 2017.
  12. Galar M, Derrac J, Peralta D, Triguero I, Paternain D, Lopez-Molina C, García S, Benítez JM, Pagola M, Barrenechea E, Bustince H. A survey of fingerprint classification Part I: Taxonomies on feature extraction methods and learning models. Knowledge-based systems. 2015 Jun 1;81:76-97.
  13. Khodadoust J, Khodadoust AM. Fingerprint indexing based on minutiae pairs and convex core point. Pattern Recognition. 2017 Jul 1;67:110-26.
  14. Zhang F, Xin S, Feng J. Combining global and minutia deep features for partial high-resolution fingerprint matching. Pattern Recognition Letters. 2019 Mar 1;119:139-147.
  15. Zhang D, Liu F, Zhao Q, Lu G, Luo N. Selecting a reference high resolution for fingerprint recognition using minutiae and pores. IEEE Transactions on Instrumentation and Measurement. 2010 Aug 23;60(3):863-71.
  16. Choi HY, Jang HU, Kim D, Son J, Mun SM, Choi S, Lee HK. Detecting composite image manipulation based on deep neural networks. In2017 international conference on systems, signals and image processing (IWSSIP) 2017 May 22 (pp. 1-5). IEEE.
  17. Sripavithra S, Akalya S, Rajarajeswari S, Kannan J, Sumathi N. Fingerprint Detection Using Minutiae Extraction. International Journal for Research in Applied Science & Engineering Technology IJRASET.;5.
  18. Bakheet S, Al-Hamadi A. Hand gesture recognition using optimized local gabor features. Journal of Computational and Theoretical Nanoscience. 2017 Mar 1;14(3):1380-9.
  19. Dabouei A, Kazemi H, Iranmanesh SM, Dawson J, Nasrabadi NM. Fingerprint distortion rectification using deep convolutional neural networks. In2018 International Conference on Biometrics (ICB) 2018 Feb 20 (pp. 1-8). IEEE.
  20. Zhang P, Li C, Hu J. A pitfall in fingerprint features extraction. In2010 11th International Conference on Control Automation Robotics & Vision 2010 Dec 7 (pp. 13-18). IEEE.

 

nn[/if 1104][if 1104 not_equal=””]n

    [foreach 1102]n t

  1. [if 1106 equals=””], [/if 1106][if 1106 not_equal=””],[/if 1106]
  2. n[/foreach]

n[/if 1104]

nn


nn[if 1114 equals=”Yes”]n

n[/if 1114]

n

n

Regular Issue Subscription Review Article

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

n

Volume 01
Issue 01
Received June 13, 2023
Accepted June 16, 2023
Published June 22, 2023

n

n

n

[if 1190 not_equal=””]n

Editor

n

[foreach 1188]n

n[/foreach]

n[/if 1190] [if 1177 not_equal=””]n

Reviewer

n

[foreach 1176]n

n[/foreach]

n[/if 1177]

n

n

Edit n function myfun() {n x=document.getElementById(“editor”);n y=document.getElementById(“down”);n z=document.getElementById(“up”);n if(x.style.display==”none”){n x.style.display=”block”;n }n else {n x.style.display=”none”;n }n if(y.style.display==”none”){n y.style.display=”block”;n }n else {n y.style.display=”none”;n }n if(z.style.display==”none”){n z.style.display=”block”;n }n else {n z.style.display=”none”;n }n }n function myfun2() {n x=document.getElementById(“reviewer”);n y=document.getElementById(“down2”);n z=document.getElementById(“up2″);n if(x.style.display==”none”){n x.style.display=”block”;n }n else {n x.style.display=”none”;n }n if(y.style.display==”none”){n y.style.display=”block”;n }n else {n y.style.display=”none”;n }n if(z.style.display==”none”){n z.style.display=”block”;n }n else {n z.style.display=”none”;n }n }n

n

n

n function myFunction2() {n var x = document.getElementById(“browsefigure”);n if (x.style.display === “block”) {n x.style.display = “none”;}n else {x.style.display = “Block”;}}n document.querySelector(“.prevBtn”).addEventListener(“click”, () => {n changeSlides(-1);});n document.querySelector(“.nextBtn”).addEventListener(“click”, () => {n changeSlides(1);});n var slideIndex = 1;n showSlides(slideIndex);n function changeSlides(n) {n showSlides((slideIndex += n));}n function currentSlide(n) {n showSlides((slideIndex = n));}n function showSlides(n) {n var i;n var slides = document.getElementsByClassName(“Slide”);n var dots = document.getElementsByClassName(“Navdot”);n if (n > slides.length) {slideIndex = 1;}n if (n (item.style.display = “none”));n Array.from(dots).forEach(n item => (item.className = item.className.replace(” selected”, “”))n );n slides[slideIndex – 1].style.display = “block”;n dots[slideIndex – 1].className += ” selected”;n }n

“}]