虹膜匹配器的比较与组合,实现可靠的个人识别

Ajay Kumar, Arun Passi
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引用次数: 42

摘要

利用虹膜图像进行生物识别的方法越来越受到文献的关注。文献中提出了几种自动虹膜识别方法,其中基于纹理信息的相位编码是最有前途的方法。然而,还没有任何尝试将这些相位保持方法结合起来以实现性能的进一步改进。本文对基于log-Gabor、Haar小波、DCT和FFT特征的虹膜识别性能进行了比较研究。我们的实验结果表明,基于Haar小波和对数Gabor滤波器的相位编码的性能是本工作中考虑的所有四种方法中最有希望的。因此,这两个匹配器的组合在性能和计算复杂性方面都是最有前途的。我们对所有411个用户(CASIA v3)和224个用户(IITD v1)数据库的实验结果表明,单独使用这两种方法都无法显著提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison and combination of iris matchers for reliable personal identification
The biometric identification approaches using iris images are receiving increasing attention in the literature. Several methods for the automated iris identification have been presented in the literature and those based on the phase encoding of texture information are suggested to be the most promising. However, there has not been any attempt to combine these phase preserving approaches to achieve further improvement in the performance. This paper presents a comparative study of the performance from the iris identification using log-Gabor, Haar wavelet, DCT and FFT based features. Our experimental results suggest that the performance from the Haar wavelet and log Gabor filter based phase encoding is the most promising among all the four approaches considered in this work. Therefore the combination of these two matchers is most promising, both in terms of performance and the computational complexity. Our experimental results from the all 411 users (CASIA v3) and 224 users (IITD v1) database illustrate significant improvement in the performance that is not possible with either of these approaches individually.
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