Rui Mao, Heming Ji, Di Cheng, Xiaoyu Wang, Yan Wang, Degang Sun
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引用次数: 1
摘要
大多数现有的身份验证技术都依赖于某些方式进行首次登录验证,例如个人识别号码(PIN)、轨迹或生物特征。然而,这些方式存在着大量的安全风险,使人们长期面临猜密码攻击、跟踪攻击和肩冲浪攻击。一旦非法用户伪造身份完成认证或绕过首次登录认证,其后续行为将变得不可控制。为了解决上述问题,我们提出了一种基于移动终端触摸行为的隐式连续认证模型。该模型利用加速度计、陀螺仪和磁力计采集的数据生成特征向量,提取包含宏观特征、微观特征和关节特征的特征向量。设计了一种卷积双向递归神经网络模型来区分传感器特征向量。在此基础上,我们对具有不同传感器特征的大型数据集Hand Movement, Orientation, and Grasp (HMOG)进行了各种实验。与目前最先进的模型相比,该模型的等误差率(EER)为0.53%,显著提高了认证精度。
Implicit Continuous Authentication Model Based on Mobile Terminal Touch Behavior
Most existing identity authentication technologies rely on some ways for the first login authentication, such as personal identification number (PIN), track, or biological characteristics. However, these ways exist plenty of security risks, which make people face password guessing attacks, trace attacks, and shoulder surfing attacks for a long time. Once the illegal users forge identity to complete authentication or bypass first login authentication, their subsequent behavior will become out of control. To solve the above problems, we propose an implicit continuous authentication model based on the touch behavior of the mobile terminal. The model uses the data collected by the accelerometer, gyroscope, and magnetometer to generate feature vectors and extracts the feature vectors containing macroscopic features, microscopic features, and joint features. And we design a convolutional bidirectional recurrent neural network model to distinguish the sensor feature vectors. On this basis, we perform various experiments on a large dataset Hand Movement, Orientation, and Grasp (HMOG) with different sensor characteristics. Compared with the most advanced models proposed recently, the results show that our model achieves an equal error rate (EER) of 0.53%, which significantly improves authentication accuracy.