The field of touch-based authentication has been rapidly developing over the last decade, creating a fragmented and difficult-to-navigate area for researchers and application developers alike due to the variety of methods investigated. In this study, we perform a systematic literature analysis of 30 studies on the techniques used for feature extraction, classification, and aggregation in touch-based authentication systems as well as the performance metrics reported by each study. Based on our findings, we design a set of experiments to compare the performance of the most frequently used techniques in the field under clearly defined conditions. In addition, we introduce three new techniques for touch-based authentication: an expanded feature set (consisting of 149 unique features), a multi-algorithm ensemble-based classifier, and a Recurrent Neural Network based stacking aggregation method. The comparison includes 14 feature sets, 11 classifiers, and 5 aggregation methods. In total, 219 model configurations are examined and we show that our novel techniques outperform the current state-of-the-art in each category. The results are also validated across three different publicly available datasets. Finally, we discuss the findings of our investigation with the aim of making the field more understandable and accessible for researchers and practitioners.
翻译:过去十年来,基于触摸的认证领域一直在迅速发展,由于所调查的方法多种多样,因此研究人员和应用开发者都有一个支离破碎和难以探索的接触区域。在本研究中,我们对30项关于地貌提取、分类和在基于触摸的认证系统中汇总技术的研究以及每项研究所报告的性能衡量标准进行了系统的文献分析。根据我们的调查结果,我们设计了一套实验,以比较在明确界定的条件下最经常使用的技术在现场的绩效。此外,我们还引进了三种基于触摸的认证新技术:一个扩大的特征集(包含149个独特的特征),一个基于共同物的多数值分类器,以及一个基于堆叠汇总方法的常规神经网络。比较包括14个地物组、11个分类器和5个汇总方法。总共对219个模型配置进行了审查,并显示我们的新技术超越了每个类别中目前的最新技术。我们还在三个不同的公开数据集中验证了结果。最后,我们讨论了我们调查的结果,使实地研究人员更易理解和理解。