Code release for NeX: Real-time View Synthesis with Neural Basis Expansion

Related tags

Deep Learningnex-code
Overview

NeX: Real-time View Synthesis with Neural Basis Expansion

Project Page | Video | Paper | COLAB | Shiny Dataset

Open NeX in Colab

NeX

We present NeX, a new approach to novel view synthesis based on enhancements of multiplane image (MPI) that can reproduce NeXt-level view-dependent effects---in real time. Unlike traditional MPI that uses a set of simple RGBα planes, our technique models view-dependent effects by instead parameterizing each pixel as a linear combination of basis functions learned from a neural network. Moreover, we propose a hybrid implicit-explicit modeling strategy that improves upon fine detail and produces state-of-the-art results. Our method is evaluated on benchmark forward-facing datasets as well as our newly-introduced dataset designed to test the limit of view-dependent modeling with significantly more challenging effects such as the rainbow reflections on a CD. Our method achieves the best overall scores across all major metrics on these datasets with more than 1000× faster rendering time than the state of the art.

Table of contents



Getting started

conda env create -f environment.yml
./download_demo_data.sh
conda activate nex
python train.py -scene data/crest_demo -model_dir crest -http
tensorboard --logdir runs/

Installation

We provide environment.yml to help you setup a conda environment.

conda env create -f environment.yml

Dataset

Shiny dataset

Download: Shiny dataset.

We provide 2 directories named shiny and shiny_extended.

  • shiny contains benchmark scenes used to report the scores in our paper.
  • shiny_extended contains additional challenging scenes used on our website project page and video

NeRF's real forward-facing dataset

Download: Undistorted front facing dataset

For real forward-facing dataset, NeRF is trained with the raw images, which may contain lens distortion. But we use the undistorted images provided by COLMAP.

However, you can try running other scenes from Local lightfield fusion (Eg. airplant) without any changes in the dataset files. In this case, the images are not automatically undistorted.

Deepview's spaces dataset

Download: Modified spaces dataset

We slightly modified the file structure of Spaces dataset in order to determine the plane placement and split train/test sets.

Using your own images.

Running NeX on your own images. You need to install COLMAP on your machine.

Then, put your images into a directory following this structure

<scene_name>
|-- images
     | -- image_name1.jpg
     | -- image_name2.jpg
     ...

The training code will automatically prepare a scene for you. You may have to tune planes.txt to get better reconstruction (see dataset explaination)

Training

Run with the paper's config

python train.py -scene ${PATH_TO_SCENE} -model_dir ${MODEL_TO_SAVE_CHECKPOINT} -http

This implementation uses scikit-image to resize images during training by default. The results and scores in the paper are generated using OpenCV's resize function. If you want the same behavior, please add -cv2resize argument.

Note that this code is tested on an Nvidia V100 32GB and 4x RTX 2080Ti GPU.

For a GPU/GPUs with less memory (e.g., a single RTX 2080Ti), you can run using the following command:

python train.py -scene ${PATH_TO_SCENE} -model_dir ${MODEL_TO_SAVE_CHECKPOINT} -http -layers 12 -sublayers 6 -hidden 256

Note that when your GPU runs ouut of memeory, you can try reducing the number of layers, sublayers, and sampled rays.

Rendering

To generate a WebGL viewer and a video result.

python train.py -scene ${scene} -model_dir ${MODEL_TO_SAVE_CHECKPOINT} -predict -http

Video rendering

To generate a video that matches the real forward-facing rendering path, add -nice_llff argument, or -nice_shiny for shiny dataset

Citation

@inproceedings{Wizadwongsa2021NeX,
    author = {Wizadwongsa, Suttisak and Phongthawee, Pakkapon and Yenphraphai, Jiraphon and Suwajanakorn, Supasorn},
    title = {NeX: Real-time View Synthesis with Neural Basis Expansion},
    booktitle = {IEEE Conference on Computer Vision and Pattern Recognition (CVPR)}, 
    year = {2021},
}

Visit us 🦉

Vision & Learning Laboratory VISTEC - Vidyasirimedhi Institute of Science and Technology

Convert game ISO and archives to CD CHD for emulation on Linux.

tochd Convert game ISO and archives to CD CHD for emulation. Author: Tuncay D. Source: https://github.com/thingsiplay/tochd Releases: https://github.c

Tuncay 20 Jan 02, 2023
Facilitating Database Tuning with Hyper-ParameterOptimization: A Comprehensive Experimental Evaluation

A Comprehensive Experimental Evaluation for Database Configuration Tuning This is the source code to the paper "Facilitating Database Tuning with Hype

DAIR Lab 9 Oct 29, 2022
Pytorch implementation for DFN: Distributed Feedback Network for Single-Image Deraining.

DFN:Distributed Feedback Network for Single-Image Deraining Abstract Recently, deep convolutional neural networks have achieved great success for sing

6 Nov 05, 2022
Using multidimensional LSTM neural networks to create a forecast for Bitcoin price

Multidimensional LSTM BitCoin Time Series Using multidimensional LSTM neural networks to create a forecast for Bitcoin price. For notes around this co

Jakob Aungiers 318 Dec 14, 2022
HAT: Hierarchical Aggregation Transformers for Person Re-identification

HAT: Hierarchical Aggregation Transformers for Person Re-identification

11 Sep 05, 2022
Code for the paper: Fighting Fake News: Image Splice Detection via Learned Self-Consistency

Fighting Fake News: Image Splice Detection via Learned Self-Consistency [paper] [website] Minyoung Huh *12, Andrew Liu *1, Andrew Owens1, Alexei A. Ef

minyoung huh (jacob) 174 Dec 09, 2022
CVPR 2020 oral paper: Overcoming Classifier Imbalance for Long-tail Object Detection with Balanced Group Softmax.

Overcoming Classifier Imbalance for Long-tail Object Detection with Balanced Group Softmax ⚠️ Latest: Current repo is a complete version. But we delet

FishYuLi 341 Dec 23, 2022
Code for our ICASSP 2021 paper: SA-Net: Shuffle Attention for Deep Convolutional Neural Networks

SA-Net: Shuffle Attention for Deep Convolutional Neural Networks (paper) By Qing-Long Zhang and Yu-Bin Yang [State Key Laboratory for Novel Software T

Qing-Long Zhang 199 Jan 08, 2023
Grow Function: Generate 3D Stacked Bifurcating Double Deep Cellular Automata based organisms which differentiate using a Genetic Algorithm...

Grow Function: A 3D Stacked Bifurcating Double Deep Cellular Automata which differentiates using a Genetic Algorithm... TLDR;High Def Trees that you can mint as NFTs on Solana

Nathaniel Gibson 4 Oct 08, 2022
CNN visualization tool in TensorFlow

tf_cnnvis A blog post describing the library: https://medium.com/@falaktheoptimist/want-to-look-inside-your-cnn-we-have-just-the-right-tool-for-you-ad

InFoCusp 778 Jan 02, 2023
SpecAugmentPyTorch - A Pytorch (support batch and channel) implementation of GoogleBrain's SpecAugment: A Simple Data Augmentation Method for Automatic Speech Recognition

SpecAugment An implementation of SpecAugment for Pytorch How to use Install pytorch, version=1.9.0 (new feature (torch.Tensor.take_along_dim) is used

IMLHF 3 Oct 11, 2022
Sample code and notebooks for Vertex AI, the end-to-end machine learning platform on Google Cloud

Google Cloud Vertex AI Samples Welcome to the Google Cloud Vertex AI sample repository. Overview The repository contains notebooks and community conte

Google Cloud Platform 560 Dec 31, 2022
Implementation of Squeezenet in pytorch, pretrained models on Cifar 10 data to come

Pytorch Squeeznet Pytorch implementation of Squeezenet model as described in https://arxiv.org/abs/1602.07360 on cifar-10 Data. The definition of Sque

gaurav pathak 86 Oct 28, 2022
the code for our CVPR 2021 paper Bilateral Grid Learning for Stereo Matching Network [BGNet]

BGNet This repository contains the code for our CVPR 2021 paper Bilateral Grid Learning for Stereo Matching Network [BGNet] Environment Python 3.6.* C

3DCV developer 87 Nov 29, 2022
Computer Vision is an elective course of MSAI, SCSE, NTU, Singapore

[AI6122] Computer Vision is an elective course of MSAI, SCSE, NTU, Singapore. The repository corresponds to the AI6122 of Semester 1, AY2021-2022, starting from 08/2021. The instructor of this course

HT. Li 5 Sep 12, 2022
Learning Multiresolution Matrix Factorization and its Wavelet Networks on Graphs

Project Learning Multiresolution Matrix Factorization and its Wavelet Networks on Graphs, https://arxiv.org/pdf/2111.01940.pdf. Authors Truong Son Hy

5 Jun 28, 2022
GeneGAN: Learning Object Transfiguration and Attribute Subspace from Unpaired Data

GeneGAN: Learning Object Transfiguration and Attribute Subspace from Unpaired Data By Shuchang Zhou, Taihong Xiao, Yi Yang, Dieqiao Feng, Qinyao He, W

Taihong Xiao 141 Apr 16, 2021
This is a tensorflow-based rotation detection benchmark, also called AlphaRotate.

AlphaRotate: A Rotation Detection Benchmark using TensorFlow Abstract AlphaRotate is maintained by Xue Yang with Shanghai Jiao Tong University supervi

yangxue 972 Jan 05, 2023
BASH - Biomechanical Animated Skinned Human

We developed a method animating a statistical 3D human model for biomechanical analysis to increase accessibility for non-experts, like patients, athletes, or designers.

Machine Learning and Data Analytics Lab FAU 66 Nov 19, 2022
a reimplementation of UnFlow in PyTorch that matches the official TensorFlow version

pytorch-unflow This is a personal reimplementation of UnFlow [1] using PyTorch. Should you be making use of this work, please cite the paper according

Simon Niklaus 134 Nov 20, 2022