Feature extraction from epigenetic traits using edge detection in iris recognition system

Z. Abidin, M. Manaf, A. S. Shibghatullah, S. Anawar, R. Ahmad
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引用次数: 10

Abstract

Iris recognition is the most accurate biometric identification system on hand. Most iris recognition systems use algorithms developed by Daugman. The performance of iris recognition is highly depends on edge detection. Canny is the edge detectors which commonly used. The objectives of this research are to a) study the edge detection criteria and b) measure the PSNR values in estimating the noise between the original iris feature and new iris template. The eye image with [320×280] dimension is obtained from the CASIA database which has been pre-processed through the segmentation and normalization in obtaining the rubber sheet model with [20×240] in dimension. Once it has been produced, the important information is extracted from the iris. Results show that, the PSNR values of iris feature before and after the process of extraction, was 24.93 and 9.12. For sobel and prewitt, both give 18.5 after the process. Based on our findings, the impact of edge detection techniques produces higher accuracy in iris recognition system.
基于边缘检测的表观遗传特征提取在虹膜识别系统中的应用
虹膜识别是目前最精确的生物识别系统。大多数虹膜识别系统使用道格曼开发的算法。虹膜识别的性能在很大程度上取决于边缘检测。Canny是常用的边缘检测器。本研究的目的是a)研究边缘检测准则;b)测量估计原始虹膜特征与新虹膜模板之间噪声的PSNR值。从CASIA数据库中得到尺寸为[320×280]的人眼图像,该数据库在得到尺寸为[20×240]的橡胶板模型时,经过分割和归一化预处理。一旦产生了虹膜,重要的信息就会从虹膜中提取出来。结果表明,虹膜特征提取前后的PSNR分别为24.93和9.12。对于sobel和prewitt来说,经过这个过程,他们的分数都是18.5。基于我们的研究结果,边缘检测技术的影响在虹膜识别系统中产生更高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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