Score Level Fusion for Iris and Periocular Biometrics Recogniton Based on Deep Learning

Yufei Wang, Songze Lei, Yonggang Li, Bo Liu, Huan Zuo
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Abstract

Abstract Traditional iris recognition has high recognition accuracy and low misrecognition rate. However, in the case of mobile terminal or distance, the image resolution and image quality decrease, and the recognition rate also decreases. To solve the above problems, this article is based on deep learning technology, on the basis of single mode state recognition, from different levels of multimodal integration, the iris and the eyes in the score level fusion recognition research, put forward the adaptive dynamic weighted score fusion method, to determine the weighing values can adaptive algorithm of the modal, without artificial specified, dynamic weighting algorithm more flexible, stronger applicability. Experimental results of casIA-Iris-LAMP and CasIA-Iris-Distance Iris database in Chinese Academy of Sciences show that the proposed fusion algorithm has higher recognition accuracy and better recognition performance than the single mode recognition algorithm and the traditional fractional fusion method, which proves the effectiveness of the algorithm.
基于深度学习的虹膜与眼周生物特征识别评分融合
传统虹膜识别具有识别准确率高、误认率低的特点。但在移动端或距离较远的情况下,图像分辨率和图像质量下降,识别率也随之下降。针对以上问题,本文基于深度学习技术,在单模态识别的基础上,从不同层次的多模态集成,对虹膜和眼睛在评分层次上的融合识别进行研究,提出了自适应动态加权评分融合方法,来确定可自适应算法的权重值,无需人工指定,动态加权算法更加灵活,适用性更强。中科院casIA-Iris-LAMP和CasIA-Iris-Distance虹膜数据库的实验结果表明,与单模识别算法和传统的分数融合方法相比,本文提出的融合算法具有更高的识别精度和更好的识别性能,证明了算法的有效性。
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