Towards Automated Content-based Photo Privacy Control in User-Centered Social Networks

Nishant Vishwamitra, Yifang Li, Hongxin Hu, Kelly E. Caine, Long Cheng, Ziming Zhao, Gail-Joon Ahn
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引用次数: 7

Abstract

A large number of photos shared online often contain private user information, which can cause serious privacy breaches when viewed by unauthorized users. Thus, there is a need for more efficient privacy control that requires automatic detection of users' private photos. However, the automatic detection of users' private photos is a challenging task, since different users may have different privacy concerns and a generalized one-size-fits-all approach for private photo detection would not be suitable for most users. User-specific detection of private photos should, therefore, be investigated. Furthermore, for effective privacy control, the exact sensitive regions in private photos need to be pinpointed, so that sensitive content can be protected via different privacy control methods. In this paper, we propose a novel system, AutoPri, to enable automatic and user-specific content-based photo privacy control in online social networks. We collect a large dataset of 31, 566 private and public photos from real-world users and present important observations on photo privacy concerns. Our system can automatically detect private photos in a user-specific manner using a detection model based on a multimodal variational autoencoder and pinpoint sensitive regions in private photos with an explainable deep learning-based approach. Our evaluations show that AutoPri can effectively determine user-specific private photos with high accuracy (94.32%) and pinpoint exact sensitive regions in them to enable effective privacy control in user-centered online social networks.
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在以用户为中心的社交网络中实现基于内容的自动照片隐私控制
网上分享的大量照片往往包含用户的私人信息,当未经授权的用户查看这些照片时,可能会造成严重的隐私泄露。因此,需要更有效的隐私控制,需要自动检测用户的私人照片。然而,用户隐私照片的自动检测是一项具有挑战性的任务,因为不同的用户可能有不同的隐私问题,通用的一刀切的隐私照片检测方法并不适合大多数用户。因此,应该调查针对用户的私人照片检测。此外,为了实现有效的隐私控制,需要精确定位私密照片中的敏感区域,通过不同的隐私控制方式对敏感内容进行保护。在本文中,我们提出了一个新的系统AutoPri,以实现在线社交网络中基于用户特定内容的自动照片隐私控制。我们收集了来自真实世界用户的31,566张私人和公开照片的大型数据集,并对照片隐私问题进行了重要观察。我们的系统可以使用基于多模态变分自编码器的检测模型以用户特定的方式自动检测私人照片,并使用可解释的基于深度学习的方法确定私人照片中的敏感区域。我们的评估表明,AutoPri能够以较高的准确率(94.32%)有效地确定用户特定的私人照片,并精确定位其中的敏感区域,从而在以用户为中心的在线社交网络中实现有效的隐私控制。
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Session details: Session 7: Encryption and Privacy RS-PKE: Ranked Searchable Public-Key Encryption for Cloud-Assisted Lightweight Platforms Prediction of Mobile App Privacy Preferences with User Profiles via Federated Learning Building a Commit-level Dataset of Real-world Vulnerabilities Shared Multi-Keyboard and Bilingual Datasets to Support Keystroke Dynamics Research
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