Vision is a popular and effective sensor for robotics from which we can derive rich information about the environment: the geometry and semantics of the scene, as well as the age, gender, identity, activity and even emotional state of humans within that scene. This raises important questions about the reach, lifespan, and potential misuse of this information. This paper is a call to action to consider privacy in the context of robotic vision. We propose a specific form privacy preservation in which no images are captured or could be reconstructed by an attacker even with full remote access. We present a set of principles by which such systems can be designed, and through a case study in localisation demonstrate in simulation a specific implementation that delivers an important robotic capability in an inherently privacy-preserving manner. This is a first step, and we hope to inspire future works that expand the range of applications open to sighted robotic systems.
翻译:视觉是机器人学中常用且有效的传感器,我们可以从中获取丰富的关于环境的信息:场景的几何和语义信息,以及场景中人类的年龄、性别、身份、活动甚至情感状态。这引出了关于这些信息的范围、寿命和潜在滥用的重要问题。本文呼吁在机器人视觉背景下考虑隐私问题。我们提出了一种特定的隐私保护形式,即不捕获任何图像,攻击者即使拥有完全的远程访问权限也无法重建图像。我们提出了一组设计此类系统的原则,并通过一个本地化的案例研究,演示了在模拟环境中实现一个重要机器人能力的特定实现过程,该过程具有固有的隐私保护性质。这是一个第一步,我们希望启发未来的工作,扩展开放给有视觉的机器人系统的应用范围。