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Intelligent keystroke pressure-based typing biometrics authentication system using radial basis function network

机译:基于径向基函数网络的智能按键压力式打字生物识别系统

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Security of an information system depends to a large extent on its ability to authenticate legitimate users as well as to withstand attacks of various kinds. Confidence in its ability to provide adequate authentication is, however, waning. This is largely due to the wrongful use of passwords by many users. In this paper, the design and development of keystroke pressure-based typing biometrics for individual user's verification which based on the analysis of habitual typing of individuals is discussed. The combination of maximum pressure exerted on the keyboard and time latency between keystrokes is used as features to create typing patterns for individual users so as to recognize authentic users and to reject impostors. Radial basis function network (RBFN), which is one of the artificial neural network, is used as a pattern matching method. The effectiveness of the proposed system is evaluated based upon false reject rate (FRR) and false accept rate (FAR). A series of experiment shows that the proposed system is effective for biometric-based security system.
机译:信息系统的安全性在很大程度上取决于其对合法用户进行身份验证以及抵御各种攻击的能力。但是,人们对其提供足够身份验证的能力的信心正在减弱。这主要是由于许多用户错误使用密码。本文讨论了基于击键压力的打字生物识别技术的设计和开发,该技术基于个人的习惯打字分析而用于个人用户验证。施加在键盘上的最大压力和击键之间的时间延迟的组合被用作为各个用户创建键入模式的功能,以便识别真实的用户并拒绝冒名顶替者。径向基函数网络(RBFN)是一种人工神经网络,被用作模式匹配方法。根据错误拒绝率(FRR)和错误接受率(FAR)评估所提出系统的有效性。一系列实验表明,该系统对于基于生物特征的安全系统是有效的。

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