Zagazig University Digital Repository
Home
Thesis & Publications
All Contents
Publications
Thesis
Graduation Projects
Research Area
Research Area Reports
Search by Research Area
Universities Thesis
ACADEMIC Links
ACADEMIC RESEARCH
Zagazig University Authors
Africa Research Statistics
Google Scholar
Research Gate
Researcher ID
CrossRef
Entropy with Local Binary Patterns for Efficient Iris Liveness Detection
Faculty
Engineering
Year:
2018
Type of Publication:
ZU Hosted
Pages:
2331–2344
Authors:
Walid Sayed Ahmed Fathy Gharib
Staff Zu Site
Abstract In Staff Site
Journal:
Wireless Personal Communications Springer Nature
Volume:
Volume 102
Keywords :
Entropy with Local Binary Patterns , Efficient
Abstract:
Iris anti-spoofing is one of the most important topics, in which the development is increasing rapidly. This paper introduces an efficient system for detecting iris attacks. The system avoids the segmentation and the normalization stages employed traditionally in fake detection systems. Wavelet packets (WPs) are used to decompose the original image into wavelet approximation and detail channels. Entropy values are extracted from the wavelet channels, and also from the local binary pattern (LBP) images of the channels. These features are used for discriminating between real and fake iris images. Support vector machines are used for the classification purpose. The aim is to contribute for improved classification accuracy with less computational complexity and reduced processing time. Entropy of the WP channels gives 99.9237% classification accuracy, and the entropy of the LBP images yields 99.781%, using ATVS-FIr-DB. Fusion of these features yields 100% classification accuracy. Entropy of the wavelet channels is sufficient to obtain 100% accuracy using CASIA-Iris-Syn database, without fusion. All images in both databases are used, without the need to discard images with unsuccessful segmentation. Segmented images from both databases are used for comparison. Results show that more discriminative features can be obtained using the proposed algorithm. System complexity and processing time are reduced noticeably, and the system is robust to different types of fakes.
Author Related Publications
Walid Sayed Ahmed Fathy Gharib, "A comprehensive review of ICU readmission prediction models: From statistical methods to deep learning approaches", Elsevier B.V., 2025
More
Department Related Publications
Abdelhamied Abdelmoniem Mohamed Shalan, "Design and Simulation of A single Feed Dual-Band U-Slot Patch Antenna", لايوجد, 1900
More
Abdelhamied Abdelmoniem Mohamed Shalan, "Wideband Overlappled Patches Microstrip Antennas", لايوجد, 1900
More
Abdelhamied Abdelmoniem Mohamed Shalan, " S. H. Zainud-Deen, M. N. I. Fahmy, and A. A. M. Shaalan, "On the Elimination of Backscattering from A Straight Wire Systems, Symposium on Antenna Technology and Applied Electromagnetics, ATEM, Canada, 1992", لايوجد, 1900
More
Mohamed Sharaf Ismail Sayed , "Low Complexity Contrast Enhancement Algorithm for Nighttime Visual Surveillance", International Conference on Intelligent Systems Design and Applications ISDA, 2010
More
Saleh Ibrahiem Saied Saleh, "ISI Tolerance of Cyclic Prefix Free Coherent Optical OFDM Communication systems", ITG, 2013
More
جامعة المنصورة
جامعة الاسكندرية
جامعة القاهرة
جامعة سوهاج
جامعة الفيوم
جامعة بنها
جامعة دمياط
جامعة بورسعيد
جامعة حلوان
جامعة السويس
شراقوة
جامعة المنيا
جامعة دمنهور
جامعة المنوفية
جامعة أسوان
جامعة جنوب الوادى
جامعة قناة السويس
جامعة عين شمس
جامعة أسيوط
جامعة كفر الشيخ
جامعة السادات
جامعة طنطا
جامعة بنى سويف