Multi-Modality Mobile Datasets for Behavioral Biometrics Research: Data/Toolset paper

Aratrika Ray-Dowling, A. Wahab, Daqing Hou, S. Schuckers
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Abstract

The ubiquity of mobile devices nowadays necessitates securing the apps and user information stored therein. However, existing one-time entry-point authentication mechanisms and enhanced security mechanisms such as Multi-Factor Authentication (MFA) are prone to a wide vector of attacks. Furthermore, MFA also introduces friction to the user experience. Therefore, what is needed is continuous authentication that once passing the entry-point authentication, will protect the mobile devices on a continuous basis by confirming the legitimate owner of the device and locking out detected impostor activities. Hence, more research is needed on the dynamic methods of mobile security such as behavioral biometrics-based continuous authentication, which is cost-effective and passive as the data utilized to authenticate users are logged from the phone's sensors. However, currently, there are not many mobile authentication datasets to perform benchmarking research. In this work, we share two novel mobile datasets (Clarkson University (CU) Mobile datasets I and II) consisting of multi-modality behavioral biometrics data from 49 and 39 users respectively (88 users in total). Each of our datasets consists of modalities such as swipes, keystrokes, acceleration, gyroscope, and pattern-tracing strokes. These modalities are collected when users are filling out a registration form in sitting both as genuine and impostor users. To exhibit the usefulness of the datasets, we have performed initial experiments on selected individual modalities from the datasets as well as the fusion of simultaneously available modalities.
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行为生物识别研究的多模态移动数据集:数据/工具集论文
如今,无处不在的移动设备需要保护存储在其中的应用程序和用户信息。然而,现有的一次性入口点身份验证机制和增强的安全机制(如多因素身份验证(MFA))容易受到广泛的攻击。此外,MFA还会给用户体验带来摩擦。因此,需要的是持续认证,一旦通过入口点认证,将通过确认设备的合法所有者并锁定检测到的冒名顶替活动来持续保护移动设备。因此,需要对移动安全的动态方法进行更多的研究,例如基于行为生物识别的连续认证,这种方法成本低且被动,因为用于认证用户的数据是从手机的传感器记录的。然而,目前还没有太多的移动认证数据集可以进行基准测试研究。在这项工作中,我们共享了两个新的移动数据集(克拉克森大学(CU)移动数据集I和II),分别由49名和39名用户(总共88名用户)的多模态行为生物特征数据组成。我们的每一个数据集都由各种模式组成,如滑动、击键、加速、陀螺仪和模式跟踪击击。当用户以真实用户和冒名用户的身份填写登记表时,收集这些模式。为了展示数据集的有用性,我们对数据集中选择的单个模式以及同时可用模式的融合进行了初步实验。
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