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Main Authors: Zimny, Dominik, Waczyńska, Joanna, Trzciński, Tomasz, Spurek, Przemysław
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2206.01290
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author Zimny, Dominik
Waczyńska, Joanna
Trzciński, Tomasz
Spurek, Przemysław
author_facet Zimny, Dominik
Waczyńska, Joanna
Trzciński, Tomasz
Spurek, Przemysław
contents Contemporary registration devices for 3D visual information, such as LIDARs and various depth cameras, capture data as 3D point clouds. In turn, such clouds are challenging to be processed due to their size and complexity. Existing methods address this problem by fitting a mesh to the point cloud and rendering it instead. This approach, however, leads to the reduced fidelity of the resulting visualization and misses color information of the objects crucial in computer graphics applications. In this work, we propose to mitigate this challenge by representing 3D objects as Neural Radiance Fields (NeRFs). We leverage a hypernetwork paradigm and train the model to take a 3D point cloud with the associated color values and return a NeRF network's weights that reconstruct 3D objects from input 2D images. Our method provides efficient 3D object representation and offers several advantages over the existing approaches, including the ability to condition NeRFs and improved generalization beyond objects seen in training. The latter we also confirmed in the results of our empirical evaluation.
format Preprint
id arxiv_https___arxiv_org_abs_2206_01290
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Points2NeRF: Generating Neural Radiance Fields from 3D point cloud
Zimny, Dominik
Waczyńska, Joanna
Trzciński, Tomasz
Spurek, Przemysław
Computer Vision and Pattern Recognition
Contemporary registration devices for 3D visual information, such as LIDARs and various depth cameras, capture data as 3D point clouds. In turn, such clouds are challenging to be processed due to their size and complexity. Existing methods address this problem by fitting a mesh to the point cloud and rendering it instead. This approach, however, leads to the reduced fidelity of the resulting visualization and misses color information of the objects crucial in computer graphics applications. In this work, we propose to mitigate this challenge by representing 3D objects as Neural Radiance Fields (NeRFs). We leverage a hypernetwork paradigm and train the model to take a 3D point cloud with the associated color values and return a NeRF network's weights that reconstruct 3D objects from input 2D images. Our method provides efficient 3D object representation and offers several advantages over the existing approaches, including the ability to condition NeRFs and improved generalization beyond objects seen in training. The latter we also confirmed in the results of our empirical evaluation.
title Points2NeRF: Generating Neural Radiance Fields from 3D point cloud
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2206.01290