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Active Authentication using an Autoencoder regularized CNN-based One-Class Classifier

机译:使用AutoEncoder正则化CNN的One类分类器主动身份验证

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Active authentication refers to the process in which users are unobtrusively monitored and authenticated continuously throughout their interactions with mobile devices. Generally, an active authentication problem is modelled as a one class classification problem due to the unavailability of data from the impostor users. Normally, the enrolled user is considered as the target class (genuine) and the unauthorized users are considered as unknown classes (impostor). We propose a convolutional neural network (CNN) based approach for one class classification in which a zero centered Gaussian noise and an autoencoder are used to model the pseudo-negative class and to regularize the network to learn meaningful feature representations for one class data, respectively. The overall network is trained using a combination of the cross-entropy and the reconstruction error losses. A key feature of the proposed approach is that any pre-trained CNN can be used as the base network for one class classification. Effectiveness of the proposed framework is demonstrated using three publically available face-based active authentication datasets and it is shown that the proposed method achieves superior performance compared to the traditional one class classification methods. The source code is available at : github.com/otkupjnoz/oc-acnn.
机译:主动认证是指用户在与移动设备的交互中连续地监控​​和认证的过程。通常,由于来自IPPOSTOR用户的数据不可用来,有效认证问题被建模为一个类分类问题。通常,已注册的用户被视为目标类(正版),未经授权的用户被视为未知类(Ippostor)。我们提出了一种基于卷积神经网络(CNN)的一种方法,用于一个类分类,其中零居中高斯噪声和AutoEncoder用于模拟伪负类并将网络正规化为一个类数据学习有意义的特征表示。使用跨熵和重建误差损耗的组合培训整个网络。所提出的方法的一个关键特征是任何预先训练的CNN都可以用作一个类分类的基础网络。所提出的框架的有效性使用三个公开的基于面部的基于面部的活动认证数据集来证明,并且显示该方法与传统的一类分类方法相比实现了卓越的性能。源代码可用于:github.com/otkupjnoz/oc-acnn。

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