1 research outputs found
Privacy Preserving Image-Based Localization
Image-based localization is a core component of many augmented/mixed reality
(AR/MR) and autonomous robotic systems. Current localization systems rely on
the persistent storage of 3D point clouds of the scene to enable camera pose
estimation, but such data reveals potentially sensitive scene information. This
gives rise to significant privacy risks, especially as for many applications 3D
mapping is a background process that the user might not be fully aware of. We
pose the following question: How can we avoid disclosing confidential
information about the captured 3D scene, and yet allow reliable camera pose
estimation? This paper proposes the first solution to what we call privacy
preserving image-based localization. The key idea of our approach is to lift
the map representation from a 3D point cloud to a 3D line cloud. This novel
representation obfuscates the underlying scene geometry while providing
sufficient geometric constraints to enable robust and accurate 6-DOF camera
pose estimation. Extensive experiments on several datasets and localization
scenarios underline the high practical relevance of our proposed approach