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Keystroke biometric system for touch screen text input on android devices optimization of equal error rate based on medians vector proximity

机译:基于中位数矢量接近的触摸屏文本输入触摸屏文本输入的键触屏文本输入

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Keystroke dynamics refers to the automated method of confirming the identity of an individual, based on the respective typing rhythm on a keyboard. An authentication with usage of this dynamics could increase the security of the system. Keystroke behavior on touchscreen based smart-phone enables additional features for the authentication. Therefore, the aim is to make the positive identification of a user more robust by analyzing the way in which a password is typed and not just on the content of what is typed. The touch-screen keyboard allows features ranging from pressure on the screen while typing or the area of keys covered by the fingers to the classical time-based features used for keystroke dynamics. In this research work, we have presented the effect of the equal combination of the touch-based and time-based based features on the identification and verification performance through a dataset of 7 users. An android application; on-screen soft keyboard, is developed to collect those keystroke details. The Median Vector Proximity classifier is applied on the collected keystroke data and the performance of the system is investigated using 47 features, which produces an average EER of 8.33% and an EER Standard deviation of 7.07%. The proposed system is compared against other systems and the results obtained in static authentication area have been found to be promising.
机译:击键动力学是指基于键盘上的相应键入节奏确认个人的身份的自动化方法。使用此动态使用的身份验证可以提高系统的安全性。基于触摸屏的击键行为智能手机可以实现验证的其他功能。因此,目的是通过分析输入密码的方式而不仅仅是键入的内容来使用户能够更加强大地识别用户的正识别。触摸屏键盘允许从屏幕上的压力范围或手指覆盖的键区域到用于击键动态的古典时间的特征时,触摸屏键盘。在这项研究工作中,我们通过7个用户的数据集介绍了基于触摸和时间的基于时间的基于时间的基于时间的特征的平等组合的影响。 Android应用程序;开发屏幕软键盘以收集这些击键细节。中位数矢量接近分类器应用于收集的击键数据,使用47个功能研究了系统的性能,该功能产生了8.33 %的平均eer,eer标准偏差为7.07 %。该提出的系统与其他系统进行比较,发现在静态认证区域中获得的结果是有前途的。

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