Robustifying the Multi-Scale Representation of Neural Radiance Fields
Nishant Jain, Suryansh Kumar, Luc Van Gool

TL;DR
This paper introduces a robust multi-scale neural radiance fields method that simultaneously addresses multi-scale imaging effects and camera pose estimation errors, improving object representation from real-world multi-view images.
Contribution
It proposes a novel approach combining scene rigidity, multi-scale representation, and graph neural network-based pose estimation to enhance NeRF's robustness in practical scenarios.
Findings
Outperforms recent NeRF-inspired methods on benchmark datasets.
Effectively handles multi-scale imaging artifacts and pose errors.
Provides more accurate neural object representations from real-world images.
Abstract
Neural Radiance Fields (NeRF) recently emerged as a new paradigm for object representation from multi-view (MV) images. Yet, it cannot handle multi-scale (MS) images and camera pose estimation errors, which generally is the case with multi-view images captured from a day-to-day commodity camera. Although recently proposed Mip-NeRF could handle multi-scale imaging problems with NeRF, it cannot handle camera pose estimation error. On the other hand, the newly proposed BARF can solve the camera pose problem with NeRF but fails if the images are multi-scale in nature. This paper presents a robust multi-scale neural radiance fields representation approach to simultaneously overcome both real-world imaging issues. Our method handles multi-scale imaging effects and camera-pose estimation problems with NeRF-inspired approaches by leveraging the fundamentals of scene rigidity. To reduce…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Neural Network Applications · Advanced Vision and Imaging
