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ContlensNet: Robust Iris Contact Lens Detection Using Deep Convolutional Neural Networks

机译:ContlensNet:使用深度卷积神经网络的稳健虹膜隐形眼镜检测

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Contact lens detection in the eye is a significant task to improve the reliability of iris recognition systems. A contact lens overlays the iris region and prevents the iris sensor from capturing the normal iris region. In this paper, we present a novel scheme for detection to detecting a contact lens using Deep Convolutional Neural Network (CNN). The proposed CNN architecture ContlensNet is structured to have fifteen layers and configured for the three-class detection problem with the following classes: images with textured (or colored) contact lens, soft (or transparent) contact lens, and no contact lens. The proposed ContlensNet is trained using numerous iris image patches and the problem of overfitting the network is addressed by using the dropout regularization method. Extensive experiments are carried out on two publicly available large-scale databases, namely: IIIT-Delhi Contact lens iris database (IIITD) and Notre Dame cosmetic contact lens database 2013 (ND) that are comprised of contact lens iris samples captured using four different sensors. The obtained results have demonstrated the improved performance of the proposed scheme with an average performance improvement of more than 10% in Correct Classification Rate (CCR%) when compared with eight different state-of-the-art contact lens detection systems.
机译:眼睛中的隐形眼镜检测是提高虹膜识别系统可靠性的一项重要任务。隐形眼镜覆盖虹膜区域,并防止虹膜传感器捕获正常虹膜区域。在本文中,我们提出了一种使用深度卷积神经网络(CNN)的隐形眼镜检测新方案。拟议的CNN体​​系结构ContlensNet构造为具有十五层,并针对以下类别的三类检测问题进行配置:带纹理(或有色)隐形眼镜,柔软(或透明)隐形眼镜和无隐形眼镜的图像。拟议的ContlensNet使用大量虹膜图像补丁进行了训练,并且通过使用辍学正则化方法解决了网络过度拟合的问题。在两个可公开获得的大型数据库上进行了广泛的实验,这些数据库是:IIIT-德里隐形眼镜虹膜数据库(IIITD)和巴黎圣母院化妆品隐形眼镜数据库2013(ND),它们由使用四个不同传感器捕获的隐形眼镜虹膜样本组成。与八种不同的最新隐形眼镜检测系统相比,所获得的结果证明了所提方案的性能得到了改进,正确分类率(CCR%)的平均性能提高了10%以上。

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