Wednesday, October 29, 2025 - 4:00pm
Event Calendar Category
Other LIDS Events
Speaker Name
Lorenzo Shaikewitz
Affiliation
LIDS
Building and Room number
32-D650
Building and Room Number
LIDS Lounge
“High-Probability Ellipsoid Bounds on Object Pose Uncertainty via SDP Relaxation”
Quantifying the uncertainty of an object’s pose estimate is essential for robust control and planning. We propose estimator-agnostic uncertainty bounds which are guaranteed to cover the ground truth object pose with high probability under minimal assumptions. Using conformal prediction, we can obtain high-probability bounds on the locations of specific object keypoints. Collectively, these bounds induce an implicit, non-convex set of pose uncertainty constraints. In this talk, we reduce this set to explicit ellipsoidal outer bounds on object translation and orientation uncertainty. Our approach consists of a hierarchy of outer semidefinite approximations inspired by the classical S-lemma which is guaranteed to converge to the true minimum volume bounding ellipsoid. This requires no initial guess of the bound's shape or size and retains high-probability coverage guarantees. We test our approach on three real-world datasets and show it consistently returns useful uncertainty bounds.
Lorenzo is a third year graduate student in Prof. Luca Carlone's group. He works primarily on trustworthy 3D object understanding and visual perception for robotics, including object pose, shape, and uncertainty estimation with guarantees.

