使用击键生物识别技术预测智能手机用户的年龄和性别

Oyebola Olasupo, A. Adesina
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引用次数: 1

摘要

本文研究了各种击键动力学特征对预测性生物识别系统的影响。本文使用Android智能手机上的开源数据软件应用程序获取了50个人的击键动力学数据。从原始数据中提取了21个常用的击键动力学特征。收集到的数据用于训练随机森林算法,使用四种不同的训练样本大小,而其余部分的数据用于分类。然后使用该算法确定21种不同击键动力学特征的重要性。结果表明,每个特征在年龄和性别预测中提供了不同程度的重要性。虽然在使用计算机键盘的预测击键动力学领域已经做出了这样的努力,但使用触摸屏智能手机虚拟键盘的同一主题的文献却很有限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Age Group and Gender of Smartphone Users Using Keystroke Biometrics
This paper investigated the impact of various keystroke dynamics features on a predictive biometric system. In this paper, keystroke dynamics data of 50 individuals have been acquired using an open-source data software application on an Android smartphone. A total number of 21 commonly used keystroke dynamics features were extracted from the raw data. The collected data was used in training a Random Forest algorithm using four different training sample sizes while the remaining portion of the data was used for classification. The algorithm was then used to determine the importance of 21 different keystroke dynamics features. The results showed that each features offers varying degree of importance in age-group and gender predictions. While such efforts have been made in the area of predictive keystroke dynamics using computer keyboards, literature on the same topic using touchscreen smartphone virtual keyboards have been limited.
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