PhotoSafer: Content-Based and Context-Aware Private Photo Protection for Smartphones

Ang Li, David Darling, Qinghua Li
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引用次数: 5

Abstract

Nowadays many people store photos in smartphones. Many of the photos contain sensitive, private information, such as a photocopy of driver's license and credit card. An arising privacy concern is with the unauthorized accesses to such private photos by installed apps. The Android permission system offers all-or-nothing access to photos stored on smartphones, which is still coarse-grained control and makes users unaware of the exact behavior of installed apps. Our analysis found that 82% of the top 200 free apps have complete access to stored photos and network on a user's smartphone. In addition, our user survey revealed that 87.5% of 112 respondents are not aware that certain apps can access their photos without informing users, and all the respondents believe that the stored photos on their smartphones contain different types of private information. Hence, we propose PhotoSafer, a content-based, context-aware private photo protection system for Android phones. PhotoSafer can detect private photos based on photo content with a well-trained deep convolutional neural network, and control access to photos based on system status (e.g., screen is locked) and app running status (e.g., background). Evaluations demonstrate that PhotoSafer can accurately identify private photos in real time. The effectiveness and efficiency of the implemented prototype system show the potential for practical use.
PhotoSafer:基于内容和上下文感知的智能手机私人照片保护
现在很多人把照片存储在智能手机里。许多照片包含敏感的私人信息,比如驾照和信用卡的复印件。一个日益引起关注的隐私问题是,已安装的应用程序未经授权访问这些私人照片。Android的权限系统提供了对存储在智能手机上的照片的全有或全无访问,这仍然是粗粒度的控制,使用户不知道安装的应用程序的确切行为。我们的分析发现,在排名前200的免费应用中,有82%可以完全访问用户智能手机上存储的照片和网络。此外,我们的用户调查显示,112名受访者中有87.5%的人不知道某些应用程序可以在不通知用户的情况下访问他们的照片,所有受访者都认为智能手机上存储的照片包含不同类型的私人信息。因此,我们提出PhotoSafer,一个基于内容的,上下文感知的Android手机私人照片保护系统。PhotoSafer可以通过训练有素的深度卷积神经网络根据照片内容检测私人照片,并根据系统状态(如屏幕被锁定)和应用程序运行状态(如后台)控制对照片的访问。评估表明,PhotoSafer可以准确地实时识别私人照片。所实现的原型系统的有效性和效率显示了实际应用的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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