학술논문

HyperPosePDF Hypernetworks Predicting the Probability Distribution on SO(3)
Document Type
Conference
Source
2023 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV) WACV Applications of Computer Vision (WACV), 2023 IEEE/CVF Winter Conference on. :2368-2378 Jan, 2023
Subject
Computing and Processing
Engineering Profession
Manifolds
Uncertainty
Three-dimensional displays
Shape
Pose estimation
Robot vision systems
Probability density function
Algorithms: Image recognition and understanding (object detection
categorization
segmentation)
Machine learning architectures
formulations
and algorithms (including transfer
low-shot
semi-
self-
and un-supervised learning)
Language
ISSN
2642-9381
Abstract
Pose estimation of objects in images is an essential problem in virtual and augmented reality and robotics. Traditional solutions use depth cameras, which can be expensive, and working solutions require long processing times. This work focuses on the more difficult task when only RGB information is available. To this end, we predict not only the pose of an object but the complete probability density function (pdf) on the rotation manifold. This is the most general way to approach the pose estimation problem and is particularly useful in analysing object symmetries. In this work, we leverage implicit neural representations for the task of pose estimation and show that hypernetworks can be used to predict the rotational pdf. Furthermore, we analyse the Fourier embedding on SO(3) and evaluate the effectiveness of an initial Fourier embedding that proved successful. Our HyperPosePDF outperforms the current SOTA approaches on the SYMSOL dataset.