The broad usage of mobile devices nowadays, the sensitiveness of the information contained in them, and the shortcomings of current mobile user authentication methods are calling for novel, secure, and unobtrusive solutions to verify the users' identity. In this article, we propose TypeFormer, a novel Transformer architecture to model free-text keystroke dynamics performed on mobile devices for the purpose of user authentication. The proposed model consists in Temporal and Channel Modules enclosing two Long Short-Term Memory (LSTM) recurrent layers, Gaussian Range Encoding (GRE), a multi-head Self-Attention mechanism, and a Block-Recurrent structure. Experimenting on one of the largest public databases to date, the Aalto mobile keystroke database, TypeFormer outperforms current state-of-the-art systems achieving Equal Error Rate (EER) values of 3.25% using only 5 enrolment sessions of 50 keystrokes each. In such way, we contribute to reducing the traditional performance gap of the challenging mobile free-text scenario with respect to its desktop and fixed-text counterparts. Additionally, we analyse the behaviour of the model with different experimental configurations such as the length of the keystroke sequences and the amount of enrolment sessions, showing margin for improvement with more enrolment data. Finally, a cross-database evaluation is carried out, demonstrating the robustness of the features extracted by TypeFormer in comparison with existing approaches.
翻译:目前移动设备的广泛使用,移动设备所含信息的敏感性,以及目前移动用户认证方法的缺陷,都要求有新颖、安全和不受干扰的解决方案,以核实用户身份。在本篇文章中,我们提议TypeFormer,这是为用户认证目的在移动设备上运行的新型变异器结构,以模拟自由文本键盘动态;拟议模式包括包含两个长期短期内存(LSTM)经常层的Tempal和频道模块,高山范围编码(GRE)、多头自备机制以及块状结构。对迄今为止最大的公共数据库之一,即Aalto移动键盘数据库进行实验,TypeFormer超越了目前最新最先进的系统,为3.25%,仅使用5次每次50键盘的注册课程。通过这种方式,我们帮助缩小具有挑战性的移动自由文本情景的传统绩效差距,并建立一个屏障结构,对目前最大的公共数据库,即Aalto 移动键盘数据库进行实验性测试,最后将模型的注册率展示为最后版本。