Mobile behavioral biometrics have become a popular topic of research, reaching promising results in terms of authentication, exploiting a multimodal combination of touchscreen and background sensor data. However, there is no way of knowing whether state-of-the-art classifiers in the literature can distinguish between the notion of user and device. In this article, we present a new database, BehavePassDB, structured into separate acquisition sessions and tasks to mimic the most common aspects of mobile Human-Computer Interaction (HCI). BehavePassDB is acquired through a dedicated mobile app installed on the subjects' devices, also including the case of different users on the same device for evaluation. We propose a standard experimental protocol and benchmark for the research community to perform a fair comparison of novel approaches with the state of the art. We propose and evaluate a system based on Long-Short Term Memory (LSTM) architecture with triplet loss and modality fusion at score level.
翻译:移动行为生物鉴别学已成为一个受欢迎的研究课题,在认证方面取得了有希望的成果,利用了触摸屏和背景感应器数据的多式联运组合,然而,还无法了解文献中最先进的分类师能否区分用户和装置的概念。在本篇文章中,我们提出了一个新的数据库,BehavePassDB, 分为不同的获取课程和任务,以模仿移动人类-计算机互动的最常见方面。BehavePassDB是通过安装在对象设备上的专用移动应用程序获得的,还包括同一评价设备上的不同用户的案例。我们提议为研究界提供一个标准实验协议和基准,以便公平比较与最新技术的新方法。我们提出并评价一个基于长期短期内存(LSTM)结构的系统,在得分一级有三重损失和模式融合。