Modern multiresolution techniques for fingerprint recognition

Other Title(s)

تقنيات حديثة متعددة الحلول لنظام التعرف على بصمات الأصبع

Dissertant

Abu Dalal, Walid Abd al-Malik

Thesis advisor

al-Hanjuri, Muhammad

University

Islamic University

Faculty

Faculty of Engineering

Department

Department of Computer Engineering

University Country

Palestine (Gaza Strip)

Degree

Master

Degree Date

2016

English Abstract

Using biometrics in recognition of persons has received more and more attention in the last years, due to the necessity to improve the information security and access restrictions of authentication systems.

Fingerprint is considered the most practical biometrics due to some specific features which make them widely accepted.

Reliable feature extraction from poor quality fingerprint images is still the most challenging problem in fingerprint recognition system.

So it needs a lot of pre-processing steps to improve the quality of fingerprint images, then it needs a reliable feature extractors to extract some distinctive features.

Recently, multiresolution transforms techniques have been widely used as a feature extractor in the field of biometric recognition.

These features can be used as an identification marks in fingerprint recognition.

The goal of this thesis is to develop a complete and an efficient fingerprint recognition system that can deal with poor quality fingerprint images.

To deal with poor quality fingerprint image with various challenging, a reliable pre-processing stage and an efficient feature extraction are needed.

Segmentation is one of the most important pre-processing steps in fingerprint identification followed by image alignment, and enhancement.

We improve a common enhancement technique based on STFT analysis by replacing the used segmentation technique which based on thresholding the energy map, with another one based on morphological operation.

We use modern multiresolution techniques; Curvelet, Wave Atoms, Shearlet transforms in extracting distinctive features from the enhanced fingerprint images in a new methodology.

The selected features are matched through multiple classifier techniques.

We use the Minimum Distance Classifier, K-Nearest Neighbour, Self-Organizing Map and Support Vector Machine.

We compare between all these classifiers with respect to the various feature extraction techniques.

We test our methodology in 114 subjects selected from a very challenges database; CASIA-FingerprintV5; and we achieve a high recognition rate of about 99.5%.

Main Subjects

Information Technology and Computer Science

No. of Pages

101

Table of Contents

Table of contents.

Abstract.

Abstract in Arabic.

Chapter One : Introduction.

Chapter Two : Literature review.

Chapter Three : Fingerprint pre-processing techniques.

Chapter Four : Feature extraction techniques.

Chapter Five : Classification techniques.

Chapter Six : Results and discussion.

Chapter Seven : Conclusions and future work.

References.

American Psychological Association (APA)

Abu Dalal, Walid Abd al-Malik. (2016). Modern multiresolution techniques for fingerprint recognition. (Master's theses Theses and Dissertations Master). Islamic University, Palestine (Gaza Strip)
https://search.emarefa.net/detail/BIM-727124

Modern Language Association (MLA)

Abu Dalal, Walid Abd al-Malik. Modern multiresolution techniques for fingerprint recognition. (Master's theses Theses and Dissertations Master). Islamic University. (2016).
https://search.emarefa.net/detail/BIM-727124

American Medical Association (AMA)

Abu Dalal, Walid Abd al-Malik. (2016). Modern multiresolution techniques for fingerprint recognition. (Master's theses Theses and Dissertations Master). Islamic University, Palestine (Gaza Strip)
https://search.emarefa.net/detail/BIM-727124

Language

English

Data Type

Arab Theses

Record ID

BIM-727124