Are Euler angles a useful rotation parameterisation for pose estimation with Normalizing Flows?
By: Giorgos Sfikas , Konstantina Nikolaidou , Foteini Papadopoulou and more
Potential Business Impact:
Helps robots see and understand objects better.
Object pose estimation is a task that is of central importance in 3D Computer Vision. Given a target image and a canonical pose, a single point estimate may very often be sufficient; however, a probabilistic pose output is related to a number of benefits when pose is not unambiguous due to sensor and projection constraints or inherent object symmetries. With this paper, we explore the usefulness of using the well-known Euler angles parameterisation as a basis for a Normalizing Flows model for pose estimation. Isomorphic to spatial rotation, 3D pose has been parameterized in a number of ways, either in or out of the context of parameter estimation. We explore the idea that Euler angles, despite their shortcomings, may lead to useful models in a number of aspects, compared to a model built on a more complex parameterisation.
Similar Papers
A Simple Algebraic Solution for Estimating the Pose of a Camera from Planar Point Features
CV and Pattern Recognition
Finds camera position and angle from flat target points
SE(3)-PoseFlow: Estimating 6D Pose Distributions for Uncertainty-Aware Robotic Manipulation
CV and Pattern Recognition
Helps robots know exactly where objects are.
Equivariant Symmetry-Aware Head Pose Estimation for Fetal MRI
CV and Pattern Recognition
Helps doctors see babies better during scans.