Behavioural biometrics have proven to be effective against identity theft as well as be considered user-friendly authentication methods. One of the most popular traits in the literature is keystroke dynamics due to the large deployment of computers and mobile devices in our society. This paper focuses on improving keystroke biometric systems on the free-text scenario. This scenario is characterised as very challenging due to the uncontrolled text conditions, the influential of the user's emotional and physical state, and the in-use application. To overcome these drawbacks, methods based on deep learning such as Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) have been proposed in the literature, outperforming traditional machine learning methods. However, these architectures still have aspects that need to be reviewed and improved. To the best of our knowledge, this is the first study that proposes keystroke biometric systems based on Transformers. The proposed Transformer architecture has achieved Equal Error Rate (EER) values of 3.84% in the popular Aalto mobile keystroke database using only 5 enrolment sessions, outperforming in large margin other state-of-the-art approaches in the literature.
翻译:实践证明,行为生物鉴别技术对于防止身份盗用是有效的,也被认为是方便用户的认证方法。文献中最受欢迎的特征之一是由于在社会中大量部署计算机和移动设备而导致的键盘动态。本文件侧重于改进自由文本情景中的键盘生物鉴别系统。这一情景由于不受控制的文本条件、用户情感和身体状态的影响力以及正在使用的应用程序而具有极大的挑战性。为了克服这些缺陷,在文献中提出了基于深层次学习的方法,如Convolual Neural网络(CNNs)和经常性神经网络(RNNS),这些方法比传统机器学习方法要好得多。然而,这些结构仍有一些需要审查和改进的方面。根据我们的最佳知识,这是首次提出以变换者为基础的键盘生物鉴别系统的研究。拟议的变换器结构在流行的Aalto移动键stroke数据库中实现了3.84%的平等错误率值,仅使用5个招生课程,比文献中其他最差的状态方法要差得多。