Designing Privacy-Preserving Visual Perception for Robot Navigation Based on User Privacy Preferences

arXiv cs.RO / 4/9/2026

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Key Points

  • The paper addresses how robot navigation cameras can capture privacy-sensitive information and argues that prior privacy-preserving methods have been driven more by technical factors than by user privacy preferences.
  • It proposes a user-centered design approach for privacy-preserving visual perception in robot navigation and validates it through two user studies.
  • The studies find that users prefer privacy-preserving visual abstractions and prefer capture-time low-resolution preservation, with desired RGB resolution varying by both the chosen privacy level and the robot’s proximity.
  • Based on these results, the authors derive a user-configurable distance-to-resolution privacy policy to guide how visual data should be degraded during navigation.

Abstract

Visual navigation is a fundamental capability of mobile service robots, yet the onboard cameras required for such navigation can capture privacy-sensitive information and raise user privacy concerns. Existing approaches to privacy-preserving navigation-oriented visual perception have largely been driven by technical considerations, with limited grounding in user privacy preferences. In this work, we propose a user-centered approach to designing privacy-preserving visual perception for robot navigation. To investigate how user privacy preferences can inform such design, we conducted two user studies. The results show that users prefer privacy-preserving visual abstractions and capture-time low-resolution preservation mechanisms: their preferred RGB resolution depends both on the desired privacy level and robot proximity during navigation. Based on these findings, we further derive a user-configurable distance-to-resolution privacy policy for privacy-preserving robot visual navigation.