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Main Authors: Gao, Xinyu, Yang, Ziyi, Zhao, Yunlu, Sun, Yuxiang, Jin, Xiaogang, Zou, Changqing
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2308.04669
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author Gao, Xinyu
Yang, Ziyi
Zhao, Yunlu
Sun, Yuxiang
Jin, Xiaogang
Zou, Changqing
author_facet Gao, Xinyu
Yang, Ziyi
Zhao, Yunlu
Sun, Yuxiang
Jin, Xiaogang
Zou, Changqing
contents A variety of Neural Radiance Fields (NeRF) methods have recently achieved remarkable success in high render speed. However, current accelerating methods are specialized and incompatible with various implicit methods, preventing real-time composition over various types of NeRF works. Because NeRF relies on sampling along rays, it is possible to provide general guidance for acceleration. To that end, we propose a general implicit pipeline for composing NeRF objects quickly. Our method enables the casting of dynamic shadows within or between objects using analytical light sources while allowing multiple NeRF objects to be seamlessly placed and rendered together with any arbitrary rigid transformations. Mainly, our work introduces a new surface representation known as Neural Depth Fields (NeDF) that quickly determines the spatial relationship between objects by allowing direct intersection computation between rays and implicit surfaces. It leverages an intersection neural network to query NeRF for acceleration instead of depending on an explicit spatial structure.Our proposed method is the first to enable both the progressive and interactive composition of NeRF objects. Additionally, it also serves as a previewing plugin for a range of existing NeRF works.
format Preprint
id arxiv_https___arxiv_org_abs_2308_04669
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle A General Implicit Framework for Fast NeRF Composition and Rendering
Gao, Xinyu
Yang, Ziyi
Zhao, Yunlu
Sun, Yuxiang
Jin, Xiaogang
Zou, Changqing
Computer Vision and Pattern Recognition
Graphics
Machine Learning
A variety of Neural Radiance Fields (NeRF) methods have recently achieved remarkable success in high render speed. However, current accelerating methods are specialized and incompatible with various implicit methods, preventing real-time composition over various types of NeRF works. Because NeRF relies on sampling along rays, it is possible to provide general guidance for acceleration. To that end, we propose a general implicit pipeline for composing NeRF objects quickly. Our method enables the casting of dynamic shadows within or between objects using analytical light sources while allowing multiple NeRF objects to be seamlessly placed and rendered together with any arbitrary rigid transformations. Mainly, our work introduces a new surface representation known as Neural Depth Fields (NeDF) that quickly determines the spatial relationship between objects by allowing direct intersection computation between rays and implicit surfaces. It leverages an intersection neural network to query NeRF for acceleration instead of depending on an explicit spatial structure.Our proposed method is the first to enable both the progressive and interactive composition of NeRF objects. Additionally, it also serves as a previewing plugin for a range of existing NeRF works.
title A General Implicit Framework for Fast NeRF Composition and Rendering
topic Computer Vision and Pattern Recognition
Graphics
Machine Learning
url https://arxiv.org/abs/2308.04669