PassFrame:从以自我为中心的视频生成基于图像的密码

Ngu Nguyen, S. Sigg
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引用次数: 3

摘要

在本文中,我们分析第一人称视角视频,以开发个性化的用户认证机制。我们提出的算法生成临时基于图像的密码,这有利于各种目的,如解锁移动设备或回退身份验证。首先,从以自我为中心的视频中提取有代表性的帧。然后,在应用聚类过程去除重复场景之前,将它们分成可区分的片段。整个过程旨在保留可记忆的图像,以形成身份验证挑战。我们整合了眼动追踪数据来选择视频帧的信息序列,并在没有面向眼睛的摄像头的情况下提出了另一种替代方法。为了评估我们的系统,我们在不同的环境中进行了实验,包括物体交互活动和旅行环境。尽管我们的机制产生可变的图形化密码,但用户的登录工作量与基于静态挑战的方法相当。我们在知情的攻击者存在的情况下验证了身份验证方案,并观察到其工作量明显高于合法用户的工作量。
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PassFrame: Generating image-based passwords from egocentric videos
In this paper, we analyse first-person-view videos to develop a personalized user authentication mechanism. Our proposed algorithm generates provisional image-based passwords which benefit a variety of purposes such as unlocking a mobile device or fallback authentication. First, representative frames are extracted from the egocentric videos. Then, they are split into distinguishable segments before a clustering procedure is applied to discard repetitive scenes. The whole process aims to retain memorable images to form the authentication challenges. We integrate eye tracking data to select informative sequences of video frames and suggest another alternative method if an eye-facing camera is not available. To evaluate our system, we perform experiments in different settings including object-interaction activities and traveling contexts. Even though our mechanism produces variable graphical passwords, the log-in effort for the user is comparable with approaches based on static challenges. We verified the authentication scheme in the presence of an informed attacker and observed that the effort is significantly higher than that of the legitimate user.
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