Neural radiance fields (NeRFs) are a powerful tool for implicit scene representations, allowing for differentiable rendering and the ability to make predictions about unseen viewpoints. There has been growing interest in object and scene-based localisation using NeRFs, with a number of recent works relying on sampling-based or Monte-Carlo localisation schemes. Unfortunately, these can be extremely computationally expensive, requiring multiple network forward passes to infer camera or object pose. To alleviate this, a variety of sampling strategies have been applied, many relying on keypoint recognition techniques from classical computer vision. This work conducts a systematic empirical comparison of these approaches and shows that in contrast to conventional feature matching approaches for geometry-based localisation, sampling-based localisation using NeRFs benefits significantly from stable features. Results show that rendering stable features provides significantly better estimation with a tenfold reduction in the number of forward passes required.
@article{arxiv.2309.11698,
title = {Rendering Stable Features Improves Sampling-Based Localisation with Neural Radiance Fields},
author = {Boxuan Zhang and Lindsay Kleeman and Michael Burke},
journal= {arXiv preprint arXiv:2309.11698},
year = {2024}
}
Comments
Accepted at the 2024 Australasian Conference on Robotics and Automation (ACRA 2024)