机器学习在眼动认证中的应用

Siyuan Peng, N. A. Madi
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引用次数: 0

摘要

鉴于最近虚拟现实头显和增强现实眼镜的采用,基于眼球运动的身份验证的可行性和需求已经得到了很好的确立。先前的研究已经证明了基于眼动的身份验证的实用性,但在实现更高的识别精度方面仍有改进的空间。在这项研究中,我们专注于将语言特征纳入基于眼动的认证中,并将我们的方法与纯粹基于9种机器学习模型的普通一阶度量的认证方法进行了比较。使用GazeBase(一个包含322名参与者的大型眼动数据集)和CELEX词汇数据库,我们表明AdaBoost分类器是表现最好的模型,平均F1得分为74.6%。更重要的是,我们表明语言特征的使用提高了大多数分类模型的准确性。我们的研究结果为机器学习模型的使用提供了见解,并激发了在基于眼动的身份验证中结合文本分析的更多工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Eye Opener on the Use of Machine Learning in Eye Movement Based Authentication
The viability and need for eye movement-based authentication has been well established in light of the recent adoption of Virtual Reality headsets and Augmented Reality glasses. Previous research has demonstrated the practicality of eye movement-based authentication, but there still remains space for improvement in achieving higher identification accuracy. In this study, we focus on incorporating linguistic features in eye movement based authentication, and we compare our approach to authentication based purely on common first-order metrics across 9 machine learning models. Using GazeBase, a large eye movement dataset with 322 participants, and the CELEX lexical database, we show that AdaBoost classifier is the best performing model with an average F1 score of 74.6%. More importantly, we show that the use of linguistic features increased the accuracy of most classification models. Our results provide insights on the use of machine learning models, and motivate more work on incorporating text analysis in eye movement based authentication.
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