Efficient BSIF-based near-infrared iris recognition

C. Rathgeb, F. Struck, C. Busch
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引用次数: 10

Abstract

Binarized statistical image features (BSIF) represents a general purpose texture descriptor originally designed for texture description and classification, such as local binary patterns (LBP) or local phase quantisation (LPQ). Recently, BSIF has extensively been applied for the purpose of biometric recognition, for instance based on face or palmprint images. While recognition accuracy reported for different biometric characteristics indicates its applicability to iris recognition, up till now BSIF has primarily been employed for iris spoofing detection in particular, fake contact lens detection. In this work we present an adaptation of BSIF for near-infrared iris recognition. In accordance with generic iris recognition schemes, a specific alignment procedure is introduced in order to achieve robustness against head tilts. Further, we propose a binarization method for BSIF-based feature histograms, to obtain a compact feature representation, which allows for a rapid comparison. On the CASIAv4-Interval iris database the proposed system achieves competitive biometric performance obtaining EERs below 0.6%, compared to traditional schemes based on Log-Gabor and quadratic spline wavelets revealing EERs of approximately 0.4%. Moreover, we show that BSIF-based feature vectors complement those extracted by traditional systems, yielding a significant performance gain in a multi-algorithm fusion scenario resulting in an EER below 0.2%, which further underlines the usefulness of the presented approach.
高效的基于bsif的近红外虹膜识别
二值化统计图像特征(BSIF)是一种通用的纹理描述符,最初用于纹理描述和分类,如局部二值模式(LBP)或局部相位量化(LPQ)。近年来,BSIF被广泛应用于生物特征识别,例如基于人脸或掌纹图像的识别。虽然对不同生物特征的识别精度表明其适用于虹膜识别,但目前BSIF主要用于虹膜欺骗检测,特别是假隐形眼镜检测。在这项工作中,我们提出了一种适应BSIF的近红外虹膜识别方法。根据通用的虹膜识别方案,介绍了一种特定的对准程序,以实现对头部倾斜的鲁棒性。此外,我们提出了一种基于bsif的特征直方图的二值化方法,以获得紧凑的特征表示,从而允许快速比较。在CASIAv4-Interval虹膜数据库上,与基于Log-Gabor和二次样条小波的传统方案相比,该系统获得了具有竞争力的生物识别性能,EERs低于0.6%,EERs约为0.4%。此外,我们发现基于bsif的特征向量与传统系统提取的特征向量相补充,在多算法融合场景中产生显著的性能提升,导致EER低于0.2%,这进一步强调了所提出方法的实用性。
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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