Realtime Quality Assessment of Iris Biometrics Under Visible Light

Mohsen Jenadeleh, Marius Pedersen, D. Saupe
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引用次数: 6

Abstract

Ensuring sufficient quality of iris images acquired by handheld imaging devices in visible light poses many challenges to iris recognition systems. Many distortions affect the input iris images, and the source and types of these distortions are unknown in uncontrolled environments. We propose a fast no-reference image quality assessment measure for predicting iris image quality to handle severely degraded iris images. The proposed differential sign-magnitude statistics index (DSMI) is based on statistical features of the local difference sign-magnitude transform, which are computed by comparing the local mean with the central pixel of the patch and considering the noticeable variations. The experiments, conducted with a reference iris recognition system and three visible light datasets, showed that the quality of iris images strongly affects the recognition performance. Using the proposed method as a quality filtering step improved the performance of the iris recognition system by rejecting poor quality iris samples.
可见光下虹膜生物识别的实时质量评估
在可见光下,手持式成像设备获取的虹膜图像质量如何,对虹膜识别系统提出了许多挑战。许多畸变会影响输入的虹膜图像,在不受控制的环境中,这些畸变的来源和类型是未知的。针对严重退化的虹膜图像,提出了一种快速的无参考图像质量评估方法。差分符号-幅度统计指数(DSMI)是基于局部差分符号-幅度变换的统计特征,通过将局部均值与patch的中心像素进行比较并考虑其显著变化来计算。在参考虹膜识别系统和三种可见光数据集上进行的实验表明,虹膜图像的质量对识别性能有很大影响。采用该方法作为质量滤波步骤,通过剔除质量差的虹膜样本,提高了虹膜识别系统的性能。
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