智能手机触摸手势生物识别认证特征重要性评估

Youcef Ouadjer, M. Adnane, Nesrine Bouadjenek
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引用次数: 5

摘要

在这项工作中,我们提出了一种智能手机触摸手势分类的特征选择方法。触摸手势,也称为触摸屏功能,被用作机器学习分类器的行为属性,以实现智能手机的身份验证系统。我们建议使用公开可用的数据集,并使用极端梯度增强(XGBoost)算法执行特征评分,以选择最相关的特征。我们进行了两个实验:第一个实验,我们使用30个特征向量进行分类,并进行特征排序。在第二个实验中,我们根据XGBoost算法给出的排名使用了一个由7个特征组成的子集。分类结果用最先进的方法进行评估。仅使用7个变量的特征向量,我们就获得了99.41%的准确率,这表明触摸屏特征包含了与人类身份相关的信息,可以用于生物识别认证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Importance Evaluation of Smartphone Touch Gestures for Biometric Authentication
In this work, we present a method of feature selection for smartphone touch gesture classification. Touch gestures, also known as touchscreen features are used as behavioral attributes with machine learning classifiers to implement authentication systems for smartphones. We propose to use a publically available dataset and perform a feature scoring with the extreme gradient boosting (XGBoost) algorithm to select the most relevant features. We carried out two experiments: in the first one, we used a vector of 30 features for the classification and we performed feature ranking. In the second experiment, we used a subset of 7 features based on the ranking given by the XGBoost algorithm. Classification results are evaluated with the state of the art approaches. We achieved an accuracy of 99.41% using only a feature vector of 7 variables, this demonstrates that touchscreen features contain relevant information about the human identity and could be used for biometric authentication.
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