基于全卷积网络和生成对抗网络的鲁棒虹膜分割

Cides S. Bezerra, Rayson Laroca, D. Lucio, E. Severo, L. F. Oliveira, A. Britto, D. Menotti
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引用次数: 27

摘要

虹膜因其高度的独特性而被认为是最重要的生物特征之一。基于虹膜的生物识别应用主要依赖于虹膜分割,其对近红外(NIR)和可见光(VIS)等不同环境的适用性不强。本文介绍了两种基于全卷积网络(fcv)和生成对抗网络(GANs)的稳健虹膜分割方法。与普通的卷积网络类似,但没有完全连接的层(即分类层),FCN在其最终使用来自不同卷积层的池化层的组合。基于博弈论,GAN被设计为两个相互竞争的网络,以产生最佳分割。所提出的分割网络在近红外图像和NICE的所有评估数据集(即BioSec, CasiaI3, CasiaT4, IITD-1)中都取得了令人满意的结果。I, CrEye-Iris和MICHE-I)在非合作和合作领域的VIS图像,优于迄今为止在文献中发现的最好的基线技术,即这些数据集的新技术。此外,我们手动标记了来自CasiaT4, CrEye-Iris和MICHE-I数据集的2,431张图像,使掩码可用于研究目的。
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Robust Iris Segmentation Based on Fully Convolutional Networks and Generative Adversarial Networks
The iris can be considered as one of the most important biometric traits due to its high degree of uniqueness. Iris-based biometrics applications depend mainly on the iris segmentation whose suitability is not robust for different environments such as near-infrared (NIR) and visible (VIS) ones. In this paper, two approaches for robust iris segmentation based on Fully Convolutional Networks (FCNs) and Generative Adversarial Networks (GANs) are described. Similar to a common convolutional network, but without the fully connected layers (i.e., the classification layers), an FCN employs at its end combination of pooling layers from different convolutional layers. Based on the game theory, a GAN is designed as two networks competing with each other to generate the best segmentation. The proposed segmentation networks achieved promising results in all evaluated datasets (i.e., BioSec, CasiaI3, CasiaT4, IITD-1) of NIR images and (NICE.I, CrEye-Iris and MICHE-I) of VIS images in both non-cooperative and cooperative domains, outperforming the baselines techniques which are the best ones found so far in the literature, i.e., a new state of the art for these datasets. Furthermore, we manually labeled 2,431 images from CasiaT4, CrEye-Iris and MICHE-I datasets, making the masks available for research purposes.
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