Iris Recognition: Measuring Feature's Quality for the Feature Selection in Unconstrained Image Capture Environments

Hugo Proença, L. Alexandre
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引用次数: 13

Abstract

Iris recognition has been used for several purposes. However, current iris recognition systems are unable to deal with noisy data and substantially increase their error rates, specially the false rejections, in these conditions. Several proposals have been made to access image quality and to identify noisy regions in iris images. In this paper we propose a method that measures the quality of each feature of the biometric signature and takes account into this information to constraint the comparable features and obtain the similarity between iris signatures. Experiments led us to conclude that this method significantly decreases the error rates in the recognition of noisy iris images, resultant from capturing in less constrained environments
虹膜识别:用于无约束图像捕获环境下特征选择的特征质量测量
虹膜识别已被用于多种目的。然而,目前的虹膜识别系统在这种情况下无法处理噪声数据,并且大大增加了其错误率,特别是误拒。为了提高虹膜图像的质量和识别虹膜图像中的噪声区域,提出了几种方法。在本文中,我们提出了一种测量生物特征签名质量的方法,并考虑这些信息来约束可比较特征,从而获得虹膜签名之间的相似性。实验结果表明,该方法显著降低了虹膜图像识别的错误率,这是由于在较少约束的环境中捕获而导致的
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