使用深度学习自动编码器的智能手机连续认证

Mario Parreño Centeno, A. Moorsel, S. Castruccio
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引用次数: 34

摘要

持续认证越来越受到在线服务提供商的关注,特别是由于移动应用程序能够收集用户特定的传感器数据。然而,目前提出的方法要么不够精确,无法提供高质量的用户体验,要么受到持续捕获数据的工程挑战的限制。在本文中,我们提出了一种基于深度学习自编码器的方法,该方法在测试的真实场景中实现了低至2:2%的相同错误率。建议的系统只依赖于加速度计数据,不需要大量的特征,因此减少了计算负担。我们讨论了维度特征数量和重新身份验证时间之间的平衡,重新身份验证时间随着维度数量的增加而减少。我们还讨论了现实场景的参数选择,例如架构的深度,重建模型之前的时间和训练数据集的长度,以及在每个特定上下文所需的准确性和可用性之间找到最佳权衡的可能方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smartphone Continuous Authentication Using Deep Learning Autoencoders
Continuous authentication is receiving increased attention from providers of on-line services, particularly due to the ability of mobile apps to collect user-specific sensor data. However, the approaches proposed so far are either not accurate enough to provide a high-quality user experience or restricted by engineering challenges to capture data continuously. In this paper, we propose an approach based on a deep learning autoencoder, which achieves an equal error rate as low as 2:2% in tested real-world scenarios. The suggested system only relies on accelerometer data and does not require a high number of features, therefore reducing the computational burden. We discuss the balance between the number of dimensional features and the re-authentication time, which decreases as the number of dimensions increases. We also discuss parameter selection for real-world scenarios e.g. depth of the architecture, time elapsed before re-building the model and length of the training dataset and possible approaches to find the optimal trade-off between accuracy and usability required for each particular context.
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