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TypeNet: Deep Learning Keystroke Biometrics

机译:TypeNet:深度学习击键生物识别技术

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摘要

We study the performance of Long Short-Term Memory networks for keystroke biometric authentication at large scale in free-text scenarios. For this we explore the performance of Long Short-Term Memory (LSTMs) networks trained with a moderate number of keystrokes per identity and evaluated under different scenarios including: i) three learning approaches depending on the loss function (softmax, contrastive, and triplet loss); ii) different number of training samples and lengths of keystroke sequences; iii) four databases based on two device types (physical vs touchscreen keyboard); and iv) comparison with existing approaches based on both traditional statistical methods and deep learning architectures. Our approach called TypeNet achieves state-of-the-art keystroke biometric authentication performance with an Equal Error Rate of 2.2 and 9.2 for physical and touchscreen keyboards, respectively, significantly outperforming previous approaches. Our experiments demonstrate a moderate increase in error with up to 100,000 subjects, demonstrating the potential of TypeNet to operate at an Internet scale. To the best of our knowledge, the databases used in this work are the largest existing free-text keystroke databases available for research with more than 136 million keystrokes from 168,000 subjects in physical keyboards, and 60,000 subjects with more than 63 million keystrokes acquired on mobile touchscreens.
机译:我们研究了长短期记忆网络在自由文本场景下大规模击键生物特征认证的性能。为此,我们探索了长短期记忆 (LSTM) 网络的性能,这些网络使用每个身份的中等击键次数进行训练,并在不同场景下进行评估,包括:i) 三种基于损失函数的学习方法(softmax、对比和三重损失);ii)不同数量的训练样本和击键序列的长度;iii) 基于两种设备类型(物理键盘与触摸屏键盘)的四个数据库;iv)与基于传统统计方法和深度学习架构的现有方法的比较。我们称为 TypeNet 的方法实现了最先进的击键生物识别身份验证性能,物理键盘和触摸屏键盘的等错误率分别为 2.2% 和 9.2%,明显优于以前的方法。我们的实验表明,多达 100,000 名受试者的误差适度增加,证明了 TypeNet 在互联网规模上运行的潜力。据我们所知,这项工作中使用的数据库是现有最大的自由文本击键数据库,可用于研究,物理键盘中 168,000 名受试者的击键次数超过 1.36 亿次,以及 60,000 名受试者在移动触摸屏上获得超过 6300 万次击键。

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