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An efficient CNN based encrypted Iris recognition approach in cognitive-IoT system

机译:基于CNN的CNN基于CNN的认知IOT系统的加密识别方法

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Recently, biometric-based security plays a vital role in the success of the Cognitive Internet of Things (C-IoT) based security framework. The iris trait solves a lot of security issues, especially in smart IoT-based applications. It increases the resistance of these systems against severe authentication attacks. In this paper, an efficient iris recognition model based on chaotic encryption and deep Convolutional Neural Networks (CNNs) is proposed for C-IoT applications. CNN is used to extract the deep iris features from the left and right eyes, which will be used as input features to a fully connected neural network with a Softmax classifier. CASIA V4 Interval dataset and Phoenix dataset are used to train the CNN model; to get the best tuning of network parameters. In this paper, the effect of adding different kinds of noise to iris images, due to noise interference related to sensing IoT devices, bad acquisition of iris images by system users, or other system assaults, is discussed. This strategy of noisy encrypted iris images is evaluated over the internet environment. Chaotic encryption is utilized to secure the transmission of iris templates in the proposed model. The results showed that the proposed approach attains supreme accuracy compared to the existing approaches, it is obtained up to 99.24% and 100% with CASIA V4 and Phoenix datasets, respectively. The proposed model achieves satisfied and competitive results regard accuracy, and robustness among existing methods. Regards to recognition accuracy rate, this methodology shows low degradation of recognition accuracy rates in the case of using noised iris images. Likewise, the proposed method has a relatively low training time, which is a useful parameter in critical IoT based uses such as Tele-Medicine application.
机译:最近,基于生物识别的安全性在基于事物(C-IOT)的安全框架的成功中起着至关重要的作用。虹膜特性解决了许多安全问题,尤其是在基于智能物联网的应用程序中。它增加了这些系统对严重认证攻击的阻力。本文提出了一种基于混沌加密和深卷积神经网络(CNNS)的有效虹膜识别模型,用于C-IOT应用。 CNN用于从左眼和右眼提取深度虹膜特征,这将用作具有Softmax分类器的完全连接的神经网络的输入特征。 Casia V4间隔数据集和Phoenix DataSet用于培训CNN模型;获得网络参数的最佳调整。在本文中,讨论了与传感物联网设备相关的噪声干扰添加不同种类噪声对虹膜图像的效果,由系统用户或其他系统攻击的噪声收购虹膜图像不良。在Internet环境中评估该嘈杂加密虹膜图像的这种策略。混沌加密用于确保在所提出的模型中的虹膜模板的传输。结果表明,与现有方法相比,该方法达到了至比的准确性,分别获得了Casia V4和Phoenix数据集的高达99.24%和100%。拟议的模型实现了满足和竞争性的结果,在现有方法中的准确性和鲁棒性。关于识别精度率,该方法在使用中断虹膜图像的情况下表现出识别精度率的低降低。同样地,所提出的方法具有相对较低的训练时间,这是基于关键物联网的使用中的有用参数,例如远程医学应用。

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