Image sharing on online social networks (OSNs) has become an indispensable part of daily social activities, but it has also led to an increased risk of privacy invasion. The recent image leaks from popular OSN services and the abuse of personal photos using advanced algorithms (e.g. DeepFake) have prompted the public to rethink individual privacy needs in OSN image sharing. However, OSN image privacy itself is quite complicated, and solutions currently in place for privacy management in reality are insufficient to provide personalized, accurate and flexible privacy protection. A more intelligent environment for privacy-friendly OSN image sharing is in demand. To fill the gap, we contribute a survey of "privacy intelligence" that targets modern privacy issues in dynamic OSN image sharing from a user-centric perspective. Specifically, we present a definition and a taxonomy of OSN image privacy, and a high-level privacy analysis framework based on the lifecycle of OSN image sharing. The framework consists of three stages with different principles of privacy by design. At each stage, we identify typical user behaviors in OSN image sharing and the privacy issues associated with these behaviors. Then a systematic review on the representative intelligent solutions targeting those privacy issues is conducted, also in a stage-based manner. The resulting analysis describes an intelligent privacy firewall for closed-loop privacy management. We also discuss the challenges and future directions in this area.
翻译:网上社交网络(OSNs)的图像共享已成为日常社交活动不可或缺的一部分,但它也导致隐私侵犯的风险增加。最近流行的OSN服务的图像泄漏以及使用先进算法(例如DeepFake)滥用个人照片,促使公众重新思考OSN图像共享的个人隐私需求。然而,OSN图像隐私本身相当复杂,目前存在的隐私管理解决方案实际上不足以提供个性化、准确和灵活的隐私保护。需要的是一个更智能的隐私友好的OSN图像共享环境。为了填补这一空白,我们协助对“隐私智能智能”进行调查,从用户中心角度以动态OSN图像共享中针对现代隐私问题。具体地说,我们介绍了OSN图像共享的定义和分类,以及基于OSN图像共享生命周期的高层次隐私分析框架。框架由三个阶段组成,通过设计不同的隐私原则。我们在每个阶段都确定了OSN图像共享中的典型用户行为以及与这些行为相关的隐私问题。然后,我们从以用户中心角度对动态OSN图像共享的现代隐私问题进行了系统化分析,我们随后在以智能隐私管理领域对智能解决方案进行了系统化分析。