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不同专家评分级融合的眼生物测量学。

Ocular biometrics by score-level fusion of disparate experts.

出版信息

IEEE Trans Image Process. 2014 Dec;23(12):5082-93. doi: 10.1109/TIP.2014.2361285. Epub 2014 Oct 2.

DOI:10.1109/TIP.2014.2361285
PMID:25296405
Abstract

The concept of periocular biometrics emerged to improve the robustness of iris recognition to degraded data. Being a relatively recent topic, most of the periocular recognition algorithms work in a holistic way and apply a feature encoding/matching strategy without considering each biological component in the periocular area. This not only augments the correlation between the components in the resulting biometric signature, but also increases the sensitivity to particular data covariates. The main novelty in this paper is to propose a periocular recognition ensemble made of two disparate components: 1) one expert analyses the iris texture and exhaustively exploits the multispectral information in visible-light data and 2) another expert parameterizes the shape of eyelids and defines a surrounding dimensionless region-of-interest, from where statistics of the eyelids, eyelashes, and skin wrinkles/furrows are encoded. Both experts work on disjoint regions of the periocular area and meet three important properties. First, they produce practically independent responses, which is behind the better performance of the ensemble when compared to the best individual recognizer. Second, they do not share particularly sensitivity to any image covariate, which accounts for augmenting the robustness against degraded data. Finally, it should be stressed that we disregard information in the periocular region that can be easily forged (e.g., shape of eyebrows), which constitutes an active anticounterfeit measure. An empirical evaluation was conducted on two public data sets (FRGC and UBIRIS.v2), and points for consistent improvements in performance of the proposed ensemble over the state-of-the-art periocular recognition algorithms.

摘要

眼眶生物识别技术的概念是为了提高虹膜识别对退化数据的稳健性而出现的。作为一个相对较新的课题,大多数眼眶识别算法都是整体工作的,并应用特征编码/匹配策略,而不考虑眼眶区域中的每个生物成分。这不仅增加了生物特征签名中各组成部分之间的相关性,而且还提高了对特定数据协变量的敏感性。本文的主要新颖之处在于提出了一种由两个不同成分组成的眼眶识别集成:1)一个专家分析虹膜纹理,并充分利用可见光数据中的多光谱信息;2)另一个专家参数化眼睑的形状,并定义一个无维度的感兴趣区域,从该区域编码眼睑、睫毛和皮肤皱纹/皱襞的统计信息。两位专家都在眼眶区域的不同区域工作,并满足三个重要特性。首先,他们产生了实际独立的响应,这是集成系统性能优于最佳个体识别器的原因。其次,他们不特别敏感于任何图像协变量,这增强了对退化数据的稳健性。最后,应该强调的是,我们忽略了眼眶区域中容易伪造的信息(例如,眉毛的形状),这构成了一种主动的防伪措施。我们在两个公共数据集(FRGC 和 UBIRIS.v2)上进行了实证评估,并指出了所提出的集成在性能上相对于最先进的眼眶识别算法的一致改进。

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Ocular biometrics by score-level fusion of disparate experts.不同专家评分级融合的眼生物测量学。
IEEE Trans Image Process. 2014 Dec;23(12):5082-93. doi: 10.1109/TIP.2014.2361285. Epub 2014 Oct 2.
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Sensors (Basel). 2019 Jul 5;19(13):2968. doi: 10.3390/s19132968.