基于击键动力学的生物识别

H. Boz, Mert Gürkan, B. Yanikoglu
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引用次数: 0

摘要

基于生物识别技术的击键动力学旨在根据用户在数字设备上的输入行为进行用户识别和认证。在这项研究中,利用从自由文本中提取的按键时间和区域分布来执行用户识别。为了获得最高代表性的属性集,提取了基于方向图、保持时间和键盘距离的属性,并在不同的配置下使用。为了更有效地处理生成的特征集,与现有研究不同的是,我们使用了带有注意机制的多层人工神经网络模型,得到了0.13%的FAR和2.5%的FRR结果。
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Keystroke Dynamics Based Biometric Identification
Biometrics based keystroke dynamics aim to perform user identification and authentication based on users' typing behaviour on digital devices. In this study, keystroke timing and regional distributions extracted from free-text are utilized to perform user identification. In order to obtain the highest representative set of attributes, attributes based on directional graph, hold time and keyboard distance have been extracted and used in different configurations. In order to process the generated feature sets more effectively, unlike the existing studies, a multilayer artificial neural network model with attention mechanism was used and 0.13% FAR and 2.5% FRR results were obtained.
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