击键动力学性能增强与软生物识别

S. Idrus, E. Cherrier, C. Rosenberger, Soumik Mondal, Patrick A. H. Bours
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引用次数: 16

摘要

人们普遍认为,一个人在键盘上打字的方式包含计时模式,可以用来对他/她进行分类,这被称为击键动力学。击键动力学是一种行为生物识别模式,然而,其性能不如形态学模式,如指纹,虹膜识别或面部识别。为了解决这个问题,我们建议将击键动力学与软生物识别技术相结合。软生物特征是指不足以验证用户身份的生物特征(例如身高、性别、皮肤/眼睛/头发颜色)。关于击键动力学,考虑了三个软类别:性别,年龄和惯用手。我们提出了不同的方法来结合一个经典的击键动力学系统的结果与这些软准则。通过简单的和乘规则,我们的实验表明,组合方法优于分类方法,其最佳结果为5.41%的等错误率。我们的方法的有效性在一个公共数据库上得到了说明。
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Keystroke dynamics performance enhancement with soft biometrics
It is accepted that the way a person types on a keyboard contains timing patterns, which can be used to classify him/her, is known as keystroke dynamics. Keystroke dynamics is a behavioural biometric modality, whose performances, however, are worse than morphological modalities such as fingerprint, iris recognition or face recognition. To cope with this, we propose to combine keystroke dynamics with soft biometrics. Soft biometrics refers to biometric characteristics that are not sufficient to authenticate a user (e.g. height, gender, skin/eye/hair colour). Concerning keystroke dynamics, three soft categories are considered: gender, age and handedness. We present different methods to combine the results of a classical keystroke dynamics system with such soft criteria. By applying simple sum and multiply rules, our experiments suggest that the combination approach performs better than the classification approach with best result of 5.41% of equal error rate. The efficiency of our approaches is illustrated on a public database.
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