论文标题
了解公共安全智能视频监视中的道德,隐私和法规
Understanding Ethics, Privacy, and Regulations in Smart Video Surveillance for Public Safety
论文作者
论文摘要
最近,智能视频监视(SVS)系统已在学者和开发人员中受到更多关注,以替代当前的被动监视系统。这些系统用于使警务和监视系统更有效并提高公共安全。但是,这些系统在监视公众日常活动时的性质带来了不同的道德挑战。在实施SV时,有不同的方法来解决隐私问题。在本文中,我们将重点关注设计在SVS中的道德和隐私挑战的设计作用。审查四项政策保护条例,概述了保护隐私保护的最佳实践,我们认为可以通过四个镜头来解决道德和隐私问题:算法,系统,模型和数据。作为一个案例研究,我们描述了我们提出的系统,并说明了我们的系统如何创建一个基线,以设计隐私毅力系统以向社会提供安全。我们使用了几种人工智能算法,例如对象检测,单一和多相机重新识别,动作识别和异常检测,以提供基本的功能系统。我们还使用云本地服务来实现智能手机应用程序,以便将输出传递给最终用户。
Recently, Smart Video Surveillance (SVS) systems have been receiving more attention among scholars and developers as a substitute for the current passive surveillance systems. These systems are used to make the policing and monitoring systems more efficient and improve public safety. However, the nature of these systems in monitoring the public's daily activities brings different ethical challenges. There are different approaches for addressing privacy issues in implementing the SVS. In this paper, we are focusing on the role of design considering ethical and privacy challenges in SVS. Reviewing four policy protection regulations that generate an overview of best practices for privacy protection, we argue that ethical and privacy concerns could be addressed through four lenses: algorithm, system, model, and data. As an case study, we describe our proposed system and illustrate how our system can create a baseline for designing a privacy perseverance system to deliver safety to society. We used several Artificial Intelligence algorithms, such as object detection, single and multi camera re-identification, action recognition, and anomaly detection, to provide a basic functional system. We also use cloud-native services to implement a smartphone application in order to deliver the outputs to the end users.