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On Neural Networks for Biometric Authentication Based on Keystroke Dynamics

机译:基于击键动力学的神经网络用于生物认证

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摘要

Nowadays, passwords have become closely associated with our daily activities. However, the development of technology also increases the risk of password leak. For example, the graphics processing unit (GPU)-parallel-computing-based brute force attack and birthday attack algorithms have greatly reduced password security; in addition, passwords are usually transmitted through wired or wireless communication media and thus are vulnerable to attack and easily exposed to illegal users. In this study, we propose a biometric authentication method to identify and block illegal users, even if the entire password is exposed. Our method simultaneously records scan codes and the keystroke sequence of passwords; furthermore, by deep learning of convolutional neural networks (CNNs), it can effectively distinguish legal users from illegal users. We first compare recognition rates between the CNN and the neural network (NN) and prove that the CNN is the better choice. The experimental results show that the proposed CNN model can block all illegal users even if the password is known by them. By using equal amounts of password data from legal and illegal users, the average login failure rate of legal users is 6%, and they can always enter passwords again to be admitted. Finally, by GPU parallel computing, we further accelerate the system performance by 4.45 times.
机译:如今,密码已与我们的日常活动紧密相关。但是,技术的发展也增加了密码泄漏的风险。例如,基于图形处理器(GPU)并行计算的蛮力攻击和生日攻击算法大大降低了密码安全性。另外,密码通常通过有线或无线通信媒体进行传输,因此容易受到攻击并容易暴露给非法用户。在这项研究中,我们提出了一种生物特征认证方法,即使暴露了整个密码,也可以识别和阻止非法用户。我们的方法同时记录扫描代码和密码的击键顺序;此外,通过对卷积神经网络(CNN)的深度学习,它可以有效地区分合法用户和非法用户。我们首先比较CNN和神经网络(NN)之间的识别率,并证明CNN是更好的选择。实验结果表明,提出的CNN模型可以阻止所有非法用户,即使他们知道密码。通过使用来自合法用户和非法用户的相等数量的密码数据,合法用户的平均登录失败率为6%,并且他们始终可以再次输入密码才能被接纳。最后,通过GPU并行计算,我们进一步将系统性能提高了4.45倍。

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