Vision is the most important sense for people, and it is also one of the main ways of cognition. As a result, people tend to utilize visual content to capture and share their life experiences, which greatly facilitates the transfer of information. Meanwhile, it also increases the risk of privacy violations, e.g., an image or video can reveal different kinds of privacy-sensitive information. Researchers have been working continuously to develop targeted privacy protection solutions, and there are several surveys to summarize them from certain perspectives. However, these surveys are either problem-driven, scenario-specific, or technology-specific, making it difficult for them to summarize the existing solutions in a macroscopic way. In this survey, a framework that encompasses various concerns and solutions for visual privacy is proposed, which allows for a macro understanding of privacy concerns from a comprehensive level. It is based on the fact that privacy concerns have corresponding adversaries, and divides privacy protection into three categories, based on computer vision (CV) adversary, based on human vision (HV) adversary, and based on CV \& HV adversary. For each category, we analyze the characteristics of the main approaches to privacy protection, and then systematically review representative solutions. Open challenges and future directions for visual privacy protection are also discussed.
翻译:视觉是人类最重要的感官之一,也是认知的主要方式之一。人们倾向于利用视觉内容捕捉和分享生活经验,这极大地促进了信息的传递。同时,这也增加了隐私侵犯的风险,例如图像或视频可能会透露不同类型的隐私信息。研究人员一直在努力开发针对性的隐私保护解决方案,并且有几项综述从某些角度总结它们。然而,这些综述要么是问题驱动的,要么是场景特定的,要么是技术特定的,导致难以宏观地理解现有解决方案。在本综述中,提出了一个框架,涵盖了各种对视觉隐私的关注和解决方案,从而允许从综合的视角宏观理解隐私关注。它基于隐私关注有相应的对手这个事实,并将隐私保护分为基于计算机视觉(CV)对手、基于人类视觉(HV)对手和基于CV和HV对手三类。针对每个类别,分析了主要隐私保护方法的特点,然后系统地回顾了代表性的解决方案。讨论了视觉隐私保护面临的挑战和未来的方向。