Fingerprint image enhancement using multiple filters

Author:

Shams Haroon1,Jan Tariqullah1,Khalil Amjad Ali1,Ahmad Naveed2,Munir Abid3,Khalil Ruhul Amin1

Affiliation:

1. Department of Electrical Engineering, University of Engineering & Technology Peshawar, Peshawar, Pakistan

2. College of Computer and Information Sciences, Prince Sultan University, Riyadh, Saudi Arabia

3. Department of Electronic Engineering, The Islamia University of Bahawalpur, Bahawalpur, Pakistan

Abstract

Biometrics is the measurement of an individual’s distinctive physical and behavioral characteristics. In comparison to traditional token-based or knowledge-based forms of identification, biometrics such as fingerprints, are more reliable. Fingerprint images recorded digitally can be affected by scanner noise, incorrect finger pressure, condition of the finger’s skin (wet, dry, or abraded), or physical material it is scanned from. Image enhancement algorithms applied to fingerprint images remove noise elements while retaining relevant structures (ridges, valleys) and help in the detection of fingerprint features (minutiae). Amongst the most common image enhancement filters is the Gabor filter, however, given their restricted maximum bandwidth as well as limited range of spectral information, it falls short. We put forward a novel method of fingerprint image enhancement using a combination of a diffusion-coherence filter and a 2D log-Gabor filter. The log-Gabor overcomes the limitations of the Gabor filter while Coherence Diffusion mitigates noise elements within fingerprint images. Implementation is done on the FVC image database and assessed via visual comparison with coherence diffusion used disjointedly and with the Gabor filter.

Funder

The College of Computer and Information Sciences at Prince Sultan University, Saudi Arabia

Publisher

PeerJ

Subject

General Computer Science

Reference30 articles.

1. Fingerprint image enhancement using coherence diffusion filter and gabor filter;Ali;Journal of Informational & Computational Science,2012

2. A semi-supervised deep rule-based classifier for robust finger knuckle-print verification;Benmalek;Evolving Systems,2022

3. Detection and spatial correlation analysis of infectious diseases using wireless body area network under imperfect wireless channel;Bhatti;Big Data,2022

4. Cataract detection using textural features and machine learning algorithms;Chande,2022

5. Comparative study of latent fingerprint image segmentation techniques based on literature review;Chaudhary,2020

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