PyTorch implementations of the NeRF model described in "NeRF: Representing Scenes as Neural Radiance Fields for View Synthesis"

Overview

PyTorch NeRF and pixelNeRF

NeRF: Open NeRF in Colab

Tiny NeRF: Open Tiny NeRF in Colab

pixelNeRF: Open pixelNeRF in Colab

This repository contains minimal PyTorch implementations of the NeRF model described in "NeRF: Representing Scenes as Neural Radiance Fields for View Synthesis" and the pixelNeRF model described in "pixelNeRF: Neural Radiance Fields from One or Few Images". While there are other PyTorch implementations out there (e.g., this one and this one for NeRF, and the authors' official implementation for pixelNeRF), I personally found them somewhat difficult to follow, so I decided to do a complete rewrite of NeRF myself. I tried to stay as close to the authors' text as possible, and I added comments in the code referring back to the relevant sections/equations in the paper. The final result is a tight 357 lines of heavily commented code (303 sloc—"source lines of code"—on GitHub) all contained in a single file. For comparison, this PyTorch implementation has approximately 970 sloc spread across several files, while this PyTorch implementation has approximately 905 sloc.

run_tiny_nerf.py trains a simplified NeRF model inspired by the "Tiny NeRF" example provided by the NeRF authors. This NeRF model does not use fine sampling and the MLP is smaller, but the code is otherwise identical to the full model code. At only 155 sloc, it might be a good place to start for people who are completely new to NeRF. If you prefer your code more object-oriented, check out run_nerf_alt.py and run_tiny_nerf_alt.py.

A Colab notebook for the full model can be found here, while a notebook for the tiny model can be found here. The generate_nerf_dataset.py script was used to generate the training data of the ShapeNet car.

For the following test view:

run_nerf.py generated the following after 20,100 iterations (a few hours on a P100 GPU):

Loss: 0.00022201683896128088

while run_tiny_nerf.py generated the following after 19,600 iterations (~35 minutes on a P100 GPU):

Loss: 0.0004151524917688221

The advantages of streamlining NeRF's code become readily apparent when trying to extend NeRF. For example, training a pixelNeRF model only required making a few changes to run_nerf.py bringing it to 370 sloc (notebook here). For comparison, the official pixelNeRF implementation has approximately 1,300 pixelNeRF-specific (i.e., not related to the image encoder or dataset) sloc spread across several files. The generate_pixelnerf_dataset.py script was used to generate the training data of ShapeNet cars.

For the following source object and view:

and target view:

run_pixelnerf.py generated the following after 73,243 iterations (~12 hours on a P100 GPU; the full pixelNeRF model was trained for 400,000 iterations, which took six days):

Loss: 0.004468636587262154

The "smearing" is an artifact caused by the bounding box sampling method.

Similarly, training an "object-centric NeRF" (i.e., where the object is rotated instead of the camera) is identical to run_tiny_nerf.py (notebook here). Rotating an object is equivalent to holding the object stationary and rotating both the camera and the lighting in the opposite direction, which is how the object-centric dataset is generated in generate_obj_nerf_dataset.py.

For the following test view:

run_tiny_obj_nerf.py generated the following after 19,400 iterations (~35 minutes on a P100 GPU):

Loss: 0.0005469498573802412

Owner
Michael A. Alcorn
Brute-forcing my way through life.
Michael A. Alcorn
An Extendible (General) Continual Learning Framework based on Pytorch - official codebase of Dark Experience for General Continual Learning

Mammoth - An Extendible (General) Continual Learning Framework for Pytorch NEWS STAY TUNED: We are working on an update of this repository to include

AImageLab 277 Dec 28, 2022
rliable is an open-source Python library for reliable evaluation, even with a handful of runs, on reinforcement learning and machine learnings benchmarks.

Open-source library for reliable evaluation on reinforcement learning and machine learning benchmarks. See NeurIPS 2021 oral for details.

Google Research 529 Jan 01, 2023
PyTorch ,ONNX and TensorRT implementation of YOLOv4

PyTorch ,ONNX and TensorRT implementation of YOLOv4

4.2k Jan 01, 2023
A PyTorch Implementation of "Watch Your Step: Learning Node Embeddings via Graph Attention" (NeurIPS 2018).

Attention Walk ⠀⠀ A PyTorch Implementation of Watch Your Step: Learning Node Embeddings via Graph Attention (NIPS 2018). Abstract Graph embedding meth

Benedek Rozemberczki 303 Dec 09, 2022
OCR Post Correction for Endangered Language Texts

📌 Coming soon: an update to the software including features from our paper on semi-supervised OCR post-correction, to be published in the Transaction

Shruti Rijhwani 96 Dec 31, 2022
Code for Efficient Visual Pretraining with Contrastive Detection

Code for DetCon This repository contains code for the ICCV 2021 paper "Efficient Visual Pretraining with Contrastive Detection" by Olivier J. Hénaff,

DeepMind 56 Nov 13, 2022
Sparse Physics-based and Interpretable Neural Networks

Sparse Physics-based and Interpretable Neural Networks for PDEs This repository contains the code and manuscript for research done on Sparse Physics-b

28 Jan 03, 2023
[CVPR2021] DoDNet: Learning to segment multi-organ and tumors from multiple partially labeled datasets

DoDNet This repo holds the pytorch implementation of DoDNet: DoDNet: Learning to segment multi-organ and tumors from multiple partially labeled datase

116 Dec 12, 2022
Python calculations for the position of the sun and moon.

Astral This is 'astral' a Python module which calculates Times for various positions of the sun: dawn, sunrise, solar noon, sunset, dusk, solar elevat

Simon Kennedy 169 Dec 20, 2022
Framework to build and train RL algorithms

RayLink RayLink is a RL framework used to build and train RL algorithms. RayLink was used to build a RL framework, and tested in a large-scale multi-a

Bytedance Inc. 32 Oct 07, 2022
PyTorch implementation for our paper "Deep Facial Synthesis: A New Challenge"

FSGAN Here is the official PyTorch implementation for our paper "Deep Facial Synthesis: A New Challenge". This project achieve the translation between

Deng-Ping Fan 32 Oct 10, 2022
Faster RCNN with PyTorch

Faster RCNN with PyTorch Note: I re-implemented faster rcnn in this project when I started learning PyTorch. Then I use PyTorch in all of my projects.

Long Chen 1.6k Dec 23, 2022
Mask2Former: Masked-attention Mask Transformer for Universal Image Segmentation in TensorFlow 2

Mask2Former: Masked-attention Mask Transformer for Universal Image Segmentation in TensorFlow 2 Bowen Cheng, Ishan Misra, Alexander G. Schwing, Alexan

Phan Nguyen 1 Dec 16, 2021
Official code release for "Learned Spatial Representations for Few-shot Talking-Head Synthesis" ICCV 2021

Official code release for "Learned Spatial Representations for Few-shot Talking-Head Synthesis" ICCV 2021

Moustafa Meshry 16 Oct 05, 2022
Self-training with Weak Supervision (NAACL 2021)

This repo holds the code for our weak supervision framework, ASTRA, described in our NAACL 2021 paper: "Self-Training with Weak Supervision"

Microsoft 148 Nov 20, 2022
Benchmark datasets, data loaders, and evaluators for graph machine learning

Overview The Open Graph Benchmark (OGB) is a collection of benchmark datasets, data loaders, and evaluators for graph machine learning. Datasets cover

1.5k Jan 05, 2023
Hierarchical Memory Matching Network for Video Object Segmentation (ICCV 2021)

Hierarchical Memory Matching Network for Video Object Segmentation Hongje Seong, Seoung Wug Oh, Joon-Young Lee, Seongwon Lee, Suhyeon Lee, Euntai Kim

Hongje Seong 72 Dec 14, 2022
JumpDiff: Non-parametric estimator for Jump-diffusion processes for Python

jumpdiff jumpdiff is a python library with non-parametric Nadaraya─Watson estimators to extract the parameters of jump-diffusion processes. With jumpd

Rydin 28 Dec 10, 2022
(under submission) Bayesian Integration of a Generative Prior for Image Restoration

BIGPrior: Towards Decoupling Learned Prior Hallucination and Data Fidelity in Image Restoration Authors: Majed El Helou, and Sabine Süsstrunk {Note: p

Majed El Helou 22 Dec 17, 2022
StyleMapGAN - Official PyTorch Implementation

StyleMapGAN - Official PyTorch Implementation StyleMapGAN: Exploiting Spatial Dimensions of Latent in GAN for Real-time Image Editing Hyunsu Kim, Yunj

NAVER AI 425 Dec 23, 2022