On the Accuracy of Eye Gaze-driven Classifiers for Predicting Image Content Familiarity in Graphical Passwords

Argyris Constantinides, Marios Belk, C. Fidas, A. Pitsillides
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引用次数: 14

Abstract

Graphical passwords leverage the picture superiority effect to enhance memorability, and reflect today's haptic users' interaction realms. Images related to users' past sociocultural experiences (e.g., retrospective) enable the creation of memorable and secure passwords, while randomly system-assigned images (e.g., generic) lead to easy-to-predict hotspot regions within graphical password schemes. What remains rather unexplored is whether the image type could be inferred during the password creation. In this work, we present a between-subjects user study in which 37 participants completed a recall-based graphical password creation task with retrospective and generic images, while we were capturing their visual behavior. We found that the image type can be inferred within a few seconds in real-time. User adaptive mechanisms might benefit from our work's findings, by providing users early feedback whether they are moving towards the creation of a weak graphical password.
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视觉驱动分类器预测图形密码中图像内容熟悉度的准确性研究
图形密码利用图片优势效应增强记忆性,反映当今触觉用户的交互领域。与用户过去的社会文化经历相关的图像(例如,回顾)可以创建令人难忘和安全的密码,而随机系统分配的图像(例如,通用)可以在图形密码方案中导致易于预测的热点区域。在密码创建过程中是否可以推断出映像类型,这一点还有待研究。在这项工作中,我们提出了一项受试者之间的用户研究,其中37名参与者完成了一个基于回忆的图形密码创建任务,其中包含回顾性和通用图像,而我们则捕捉他们的视觉行为。我们发现可以在几秒钟内实时推断出图像类型。用户自适应机制可能受益于我们的工作发现,通过向用户提供早期反馈,他们是否正在朝着创建弱图形密码的方向发展。
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