基于虹膜识别系统的特征提取中Legendre小波滤波器与Gabor小波滤波器的比较

M. Danlami, Sapiee Jamel, S. N. Ramli, Siti Radhiah Megat Azahari
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引用次数: 8

摘要

虹膜识别系统是当今最可靠的生物识别形式之一。虹膜识别系统可靠的原因包括:虹膜不会随着年龄的增长而改变,即使在50米以外的地方也能被识别出来。虹膜识别系统的过程主要包括四个步骤。四个主要步骤是;虹膜图像的采集、预处理、特征提取和匹配,使得虹膜识别的过程与个体的虹膜相匹配。然而,大多数研究者认为特征提取是识别过程中的一个关键阶段。该阶段的任务是提取待识别个体的独特特征。近二十年来,人们提出了不同的虹膜特征提取算法。本研究考虑了最常用的Gabor滤波器和Legendre小波滤波器之一。我们还将它们应用于三个不同的数据集;CASIA, UBIRIS和MMU数据库。然后,我们根据错误接受率(FAR)、错误拒绝率(FRR)、真实接受率(GAR)及其准确性进行评估和比较。结果表明,与Gabor滤波器相比,使用UBIRIS数据库时,Legendre小波滤波器的识别精度显著提高,差异达5.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing the Legendre Wavelet filter and the Gabor Wavelet filter For Feature Extraction based on Iris Recognition System
Iris recognition system is today among the most reliable form of biometric recognition. Some of the reasons why the iris recognition system is reliable include; Iris never changes due to ageing and individual can be recognized with their irises from long distances up to 50m away. The iris recognition system process includes four main steps. The four main steps are; iris image acquisition, preprocessing, feature extraction and matching, which makes the processes in recognizing an individual with his or her iris. However, most researchers recognized feature extraction as a critical stage in the recognition process. The stage is tasked with extracting unique feature of the individual to be recognized. Different algorithm over two-decade has been proposed to extract features from the iris. This research considered the Gabor filter, which is one of the most used and Legendre wavelet filters. We also apply them on three different datasets; CASIA, UBIRIS and MMU databases. Then we evaluate and compare based on the False Acceptance Rate (FAR), False Rejection Rate (FRR), Genuine Acceptance Rate (GAR) and their accuracy. The result shows a significate increase in recognition accuracy of the Legendre wavelet filter against the Gabor filter with up to 5.4% difference when applied with the UBIRIS database.
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