AI RESEARCH

AnchorD: Metric Grounding of Monocular Depth Using Factor Graphs

arXiv CS.CV

ArXi:2605.02667v1 Announce Type: cross Dense and accurate depth estimation is essential for robotic manipulation, grasping, and navigation, yet currently available depth sensors are prone to errors on transparent, specular, and general non-Lambertian surfaces. To mitigate these errors, large-scale monocular depth estimation approaches provide strong structural priors, but their predictions can be potentially skewed or mis-scaled in metric units, limiting their direct use in robotics. Thus, in this work, we propose a.