Official PyTorch Implementation of paper "NeLF: Neural Light-transport Field for Single Portrait View Synthesis and Relighting", EGSR 2021.

Related tags

Text Data & NLPnelf
Overview

NeLF: Neural Light-transport Field for Single Portrait View Synthesis and Relighting

Official PyTorch Implementation of paper "NeLF: Neural Light-transport Field for Single Portrait View Synthesis and Relighting", EGSR 2021.

Tiancheng Sun1*, Kai-En Lin1*, Sai Bi2, Zexiang Xu2, Ravi Ramamoorthi1

1University of California, San Diego, 2Adobe Research

*Equal contribution

Project Page | Paper | Pretrained models | Validation data | Rendering script

Requirements

Install required packages

Make sure you have up-to-date NVIDIA drivers supporting CUDA 11.1 (10.2 could work but need to change cudatoolkit package accordingly)

Run

conda env create -f environment.yml
conda activate pixelnerf

The following packages are used:

  • PyTorch (1.7 & 1.9.0 Tested)

  • OpenCV-Python

  • matplotlib

  • numpy

  • tqdm

OS system: Ubuntu 20.04

Download CelebAMask-HQ dataset link

  1. Download the dataset

  2. Remove background with the provided masks in the dataset

  3. Downsample the dataset to 512x512

  4. Store the resulting data in [path_to_data_directory]/CelebAMask

    Following this data structure

    [path_to_data_directory] --- data --- CelebAMask --- 0.jpg
                                       |              |- 1.jpg
                                       |              |- 2.jpg
                                       |              ...
                                       |- blender_both --- sub001
                                       |                |- sub002
                                       |                ...
    
    

(Optional) Download and render FaceScape dataset link

Due to FaceScape's license, we cannot release the full dataset. Instead, we will release our rendering script.

  1. Download the dataset

  2. Install Blender link

  3. Run rendering script link

Usage

Testing

  1. Download our pretrained checkpoint and testing data. Extract the content to [path_to_data_directory]. The data structure should look like this:

    [path_to_data_directory] --- data --- CelebAMask
                              |        |- blender_both
                              |        |- blender_view
                              |        ...
                              |- data_results --- nelf_ft
                              |- data_test --- validate_0
                                            |- validate_1
                                            |- validate_2
    
  2. In arg/__init__.py, setup data path by changing base_path

  3. Run python run_test.py nelf_ft [validation_data_name] [#iteration_for_the_model]

    e.g. python run_test.py nelf_ft validate_0 500000

  4. The results are stored in [path_to_data_directory]/data_test/[validation_data_name]/results

Training

Due to FaceScape's license, we are not allowed to release the full dataset. We will use validation data to run the following example.

  1. Download our validation data. Extract the content to [path_to_data_directory]. The data structure should look like this:

    [path_to_data_directory] --- data --- CelebAMask
                              |        |- blender_both
                              |        |- blender_view
                              |        ...
                              |- data_results --- nelf_ft
                              |- data_test --- validate_0
                                            |- validate_1
                                            |- validate_2
    

    (Optional) Run rendering script and render your own data.

    Remember to change line 35~42 and line 45, 46 in arg/config_nelf_ft.py accordingly.

  2. In arg/__init__.py, setup data path by changing base_path

  3. Run python run_train.py nelf_ft

  4. The intermediate results and model checkpoints are saved in [path_to_data_directory]/data_results/nelf_ft

Configs

The following config files can be found inside arg folder

Citation

@inproceedings {sun2021nelf,
    booktitle = {Eurographics Symposium on Rendering},
    title = {NeLF: Neural Light-transport Field for Portrait View Synthesis and Relighting},
    author = {Sun, Tiancheng and Lin, Kai-En and Bi, Sai and Xu, Zexiang and Ramamoorthi, Ravi},
    year = {2021},
}
Owner
Ken Lin
Ken Lin
🚀 RocketQA, dense retrieval for information retrieval and question answering, including both Chinese and English state-of-the-art models.

In recent years, the dense retrievers based on pre-trained language models have achieved remarkable progress. To facilitate more developers using cutt

475 Jan 04, 2023
Officile code repository for "A Game-Theoretic Perspective on Risk-Sensitive Reinforcement Learning"

CvarAdversarialRL Official code repository for "A Game-Theoretic Perspective on Risk-Sensitive Reinforcement Learning". Initial setup Create a virtual

Mathieu Godbout 1 Nov 19, 2021
NAACL 2022: MCSE: Multimodal Contrastive Learning of Sentence Embeddings

MCSE: Multimodal Contrastive Learning of Sentence Embeddings This repository contains code and pre-trained models for our NAACL-2022 paper MCSE: Multi

Saarland University Spoken Language Systems Group 39 Nov 15, 2022
초성 해석기 based on ko-BART

초성 해석기 개요 한국어 초성만으로 이루어진 문장을 입력하면, 완성된 문장을 예측하는 초성 해석기입니다. 초성: ㄴㄴ ㄴㄹ ㅈㅇㅎ 예측 문장: 나는 너를 좋아해 모델 모델은 SKT-AI에서 공개한 Ko-BART를 이용합니다. 데이터 문장 단위로 이루어진 아무 코퍼스나

Dawoon Jung 29 Oct 28, 2022
This project uses unsupervised machine learning to identify correlations between daily inoculation rates in the USA and twitter sentiment in regards to COVID-19.

Twitter COVID-19 Sentiment Analysis Members: Christopher Bach | Khalid Hamid Fallous | Jay Hirpara | Jing Tang | Graham Thomas | David Wetherhold Pro

4 Oct 15, 2022
AutoGluon: AutoML for Text, Image, and Tabular Data

AutoML for Text, Image, and Tabular Data AutoGluon automates machine learning tasks enabling you to easily achieve strong predictive performance in yo

Amazon Web Services - Labs 5.2k Dec 29, 2022
Conversational-AI-ChatBot - Intelligent ChatBot built with Microsoft's DialoGPT transformer to make conversations with human users!

Conversational AI ChatBot Intelligent ChatBot built with Microsoft's DialoGPT transformer to make conversations with human users! In this project? Thi

Rajkumar Lakshmanamoorthy 6 Nov 30, 2022
Trained T5 and T5-large model for creating keywords from text

text to keywords Trained T5-base and T5-large model for creating keywords from text. Supported languages: ru Pretraining Large version | Pretraining B

Danil 61 Nov 24, 2022
Chinese Grammatical Error Diagnosis

nlp-CGED Chinese Grammatical Error Diagnosis 中文语法纠错研究 基于序列标注的方法 所需环境 Python==3.6 tensorflow==1.14.0 keras==2.3.1 bert4keras==0.10.6 笔者使用了开源的bert4keras

12 Nov 25, 2022
🤗Transformers: State-of-the-art Natural Language Processing for Pytorch and TensorFlow 2.0.

State-of-the-art Natural Language Processing for PyTorch and TensorFlow 2.0 🤗 Transformers provides thousands of pretrained models to perform tasks o

Hugging Face 77.3k Jan 03, 2023
Residual2Vec: Debiasing graph embedding using random graphs

Residual2Vec: Debiasing graph embedding using random graphs This repository contains the code for S. Kojaku, J. Yoon, I. Constantino, and Y.-Y. Ahn, R

SADAMORI KOJAKU 5 Oct 12, 2022
Code for the paper TestRank: Bringing Order into Unlabeled Test Instances for Deep Learning Tasks

TestRank in Pytorch Code for the paper TestRank: Bringing Order into Unlabeled Test Instances for Deep Learning Tasks by Yu Li, Min Li, Qiuxia Lai, Ya

3 May 19, 2022
TPlinker for NER 中文/英文命名实体识别

本项目是参考 TPLinker 中HandshakingTagging思想,将TPLinker由原来的关系抽取(RE)模型修改为命名实体识别(NER)模型。

GodK 113 Dec 28, 2022
Yes it's true :broken_heart:

Information WARNING: No longer hosted If you would like to be on this repo's readme simply fork or star it! Forks 1 - Flowzii 2 - Errorcrafter 3 - vk-

Dropout 66 Dec 31, 2022
ZUNIT - Toward Zero-Shot Unsupervised Image-to-Image Translation

ZUNIT Dependencies you can install all the dependencies by pip install -r requirements.txt Datasets Download CUB dataset. Unzip the birds.zip at ./da

Chen Yuanqi 9 Jun 24, 2022
FB ID CLONER WUTHOT CHECKPOINT, FACEBOOK ID CLONE FROM FILE

* MY SOCIAL MEDIA : Programming And Memes Want to contact Mr. Error ? CONTACT : [ema

Mr. Error 9 Jun 17, 2021
A demo for end-to-end English and Chinese text spotting using ABCNet.

ABCNet_Chinese A demo for end-to-end English and Chinese text spotting using ABCNet. This is an old model that was trained a long ago, which serves as

Yuliang Liu 45 Oct 04, 2022
A Transformer Implementation that is easy to understand and customizable.

Simple Transformer I've written a series of articles on the transformer architecture and language models on Medium. This repository contains an implem

Naoki Shibuya 4 Jan 20, 2022
ChainKnowledgeGraph, 产业链知识图谱包括A股上市公司、行业和产品共3类实体

ChainKnowledgeGraph, 产业链知识图谱包括A股上市公司、行业和产品共3类实体,包括上市公司所属行业关系、行业上级关系、产品上游原材料关系、产品下游产品关系、公司主营产品、产品小类共6大类。 上市公司4,654家,行业511个,产品95,559条、上游材料56,824条,上级行业480条,下游产品390条,产品小类52,937条,所属行业3,946条。

liuhuanyong 415 Jan 06, 2023