一种无约束非角度虹膜识别的统一方法

Sim Hiew Moi, H. Asmuni, Rohayanti Hassan, R. Othman
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引用次数: 13

摘要

提高非理想虹膜识别性能已成为近年来虹膜生物识别研究的主要热点之一。在实际的虹膜图像采集中,捕获非角度虹膜图像是常见的,也是不可避免的。这种偏离角度的虹膜图像被归类为非理想的,因为它们大大降低了虹膜识别的性能。在本文中,我们提出了一个统一的框架,旨在提高非角度虹膜识别性能。提出了最小二乘椭圆拟合(LSEF)和几何校正(GC)相结合的虹膜分割方法。对于非角度图像,虹膜和瞳孔的位置不合适会影响虹膜图像内边界和外边界的有效分割。利用所提出的技术,迭代拟合内外边界。对于特征提取,我们提出了NeuWave网络(受Haar小波分解和神经网络的启发)。用小波系数表示虹膜特征。每个不同角度的虹膜都有自己的显著系数,这些系数加上一组权重,就形成了虹膜模板。通过错误拒绝率、错误接受率和可判决性指标来衡量该方法的识别精度。我们用WVU-IBIDC数据集对算法进行了评估。
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A unified approach for unconstrained off-angle iris recognition
Improving the performance of non-idealistic iris recognition has recently become one of the main focus in iris biometric research. In real-world iris image acquisitions, it is common and unavoidable to capture off-angle iris images. Such off-angle iris images are categorized as non-idealistic because they substantially degrade the performance of iris recognition. In this paper, we present a unified framework designed to improve off-angle iris recognition performance. We propose combination of least square ellipse fitting (LSEF) technique and the geometric calibration (GC) technique for the iris segmentation. For off-angle images, the improper location of iris and pupil interferes with the ability to effectively segment the inner boundary and outer boundary of the iris image. With the proposed techniques, inner and outer boundaries are fitted iteratively. For feature extraction, we propose a NeuWave Network (inspired by the Haar wavelet decomposition and neural network). The iris features are represented using the wavelet coefficients. Each different angle of the iris have its own significant coefficient and these coefficient, with a set of weights, then forms the iris template. The approach is evaluated based on recognition accuracy measured by the false rejection, false acceptance rate, and decidability index. We evaluate the algorithms with WVU-IBIDC datasets.
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