Code for "Neural Body: Implicit Neural Representations with Structured Latent Codes for Novel View Synthesis of Dynamic Humans" CVPR 2021 best paper candidate

Overview

News

  • 05/17/2021 To make the comparison on ZJU-MoCap easier, we save quantitative and qualitative results of other methods at here, including Neural Volumes, Multi-view Neural Human Rendering, and Deferred Neural Human Rendering.
  • 05/13/2021 To make the following works easier compare with our model, we save our rendering results of ZJU-MoCap at here and write a document that describes the training and test protocols.
  • 05/12/2021 The code supports the test and visualization on unseen human poses.
  • 05/12/2021 We update the ZJU-MoCap dataset with better fitted SMPL using EasyMocap. We also release a website for visualization. Please see here for the usage of provided smpl parameters.

Neural Body: Implicit Neural Representations with Structured Latent Codes for Novel View Synthesis of Dynamic Humans

Project Page | Video | Paper | Data

monocular

Neural Body: Implicit Neural Representations with Structured Latent Codes for Novel View Synthesis of Dynamic Humans
Sida Peng, Yuanqing Zhang, Yinghao Xu, Qianqian Wang, Qing Shuai, Hujun Bao, Xiaowei Zhou
CVPR 2021

Any questions or discussions are welcomed!

Installation

Please see INSTALL.md for manual installation.

Installation using docker

Please see docker/README.md.

Thanks to Zhaoyi Wan for providing the docker implementation.

Run the code on the custom dataset

Please see CUSTOM.

Run the code on People-Snapshot

Please see INSTALL.md to download the dataset.

We provide the pretrained models at here.

Process People-Snapshot

We already provide some processed data. If you want to process more videos of People-Snapshot, you could use tools/process_snapshot.py.

You can also visualize smpl parameters of People-Snapshot with tools/vis_snapshot.py.

Visualization on People-Snapshot

Take the visualization on female-3-casual as an example. The command lines for visualization are recorded in visualize.sh.

  1. Download the corresponding pretrained model and put it to $ROOT/data/trained_model/if_nerf/female3c/latest.pth.

  2. Visualization:

    • Visualize novel views of single frame
    python run.py --type visualize --cfg_file configs/snapshot_exp/snapshot_f3c.yaml exp_name female3c vis_novel_view True num_render_views 144
    

    monocular

    • Visualize views of dynamic humans with fixed camera
    python run.py --type visualize --cfg_file configs/snapshot_exp/snapshot_f3c.yaml exp_name female3c vis_novel_pose True
    

    monocular

    • Visualize mesh
    # generate meshes
    python run.py --type visualize --cfg_file configs/snapshot_exp/snapshot_f3c.yaml exp_name female3c vis_mesh True train.num_workers 0
    # visualize a specific mesh
    python tools/render_mesh.py --exp_name female3c --dataset people_snapshot --mesh_ind 226
    

    monocular

  3. The results of visualization are located at $ROOT/data/render/female3c and $ROOT/data/perform/female3c.

Training on People-Snapshot

Take the training on female-3-casual as an example. The command lines for training are recorded in train.sh.

  1. Train:
    # training
    python train_net.py --cfg_file configs/snapshot_exp/snapshot_f3c.yaml exp_name female3c resume False
    # distributed training
    python -m torch.distributed.launch --nproc_per_node=4 train_net.py --cfg_file configs/snapshot_exp/snapshot_f3c.yaml exp_name female3c resume False gpus "0, 1, 2, 3" distributed True
    
  2. Train with white background:
    # training
    python train_net.py --cfg_file configs/snapshot_exp/snapshot_f3c.yaml exp_name female3c resume False white_bkgd True
    
  3. Tensorboard:
    tensorboard --logdir data/record/if_nerf
    

Run the code on ZJU-MoCap

Please see INSTALL.md to download the dataset.

We provide the pretrained models at here.

Potential problems of provided smpl parameters

  1. The newly fitted parameters locate in new_params. Currently, the released pretrained models are trained on previously fitted parameters, which locate in params.
  2. The smpl parameters of ZJU-MoCap have different definition from the one of MPI's smplx.
    • If you want to extract vertices from the provided smpl parameters, please use zju_smpl/extract_vertices.py.
    • The reason that we use the current definition is described at here.

It is okay to train Neural Body with smpl parameters fitted by smplx.

Test on ZJU-MoCap

The command lines for test are recorded in test.sh.

Take the test on sequence 313 as an example.

  1. Download the corresponding pretrained model and put it to $ROOT/data/trained_model/if_nerf/xyzc_313/latest.pth.
  2. Test on training human poses:
    python run.py --type evaluate --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313
    
  3. Test on unseen human poses:
    python run.py --type evaluate --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 test_novel_pose True
    

Visualization on ZJU-MoCap

Take the visualization on sequence 313 as an example. The command lines for visualization are recorded in visualize.sh.

  1. Download the corresponding pretrained model and put it to $ROOT/data/trained_model/if_nerf/xyzc_313/latest.pth.

  2. Visualization:

    • Visualize novel views of single frame
    python run.py --type visualize --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 vis_novel_view True
    

    zju_mocap

    • Visualize novel views of single frame by rotating the SMPL model
    python run.py --type visualize --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 vis_novel_view True num_render_views 100
    

    zju_mocap

    • Visualize views of dynamic humans with fixed camera
    python run.py --type visualize --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 vis_novel_pose True num_render_frame 1000 num_render_views 1
    

    zju_mocap

    • Visualize views of dynamic humans with rotated camera
    python run.py --type visualize --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 vis_novel_pose True num_render_frame 1000
    

    zju_mocap

    • Visualize mesh
    # generate meshes
    python run.py --type visualize --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 vis_mesh True train.num_workers 0
    # visualize a specific mesh
    python tools/render_mesh.py --exp_name xyzc_313 --dataset zju_mocap --mesh_ind 0
    

    zju_mocap

  3. The results of visualization are located at $ROOT/data/render/xyzc_313 and $ROOT/data/perform/xyzc_313.

Training on ZJU-MoCap

Take the training on sequence 313 as an example. The command lines for training are recorded in train.sh.

  1. Train:
    # training
    python train_net.py --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 resume False
    # distributed training
    python -m torch.distributed.launch --nproc_per_node=4 train_net.py --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 resume False gpus "0, 1, 2, 3" distributed True
    
  2. Train with white background:
    # training
    python train_net.py --cfg_file configs/zju_mocap_exp/latent_xyzc_313.yaml exp_name xyzc_313 resume False white_bkgd True
    
  3. Tensorboard:
    tensorboard --logdir data/record/if_nerf
    

Citation

If you find this code useful for your research, please use the following BibTeX entry.

@inproceedings{peng2021neural,
  title={Neural Body: Implicit Neural Representations with Structured Latent Codes for Novel View Synthesis of Dynamic Humans},
  author={Peng, Sida and Zhang, Yuanqing and Xu, Yinghao and Wang, Qianqian and Shuai, Qing and Bao, Hujun and Zhou, Xiaowei},
  booktitle={CVPR},
  year={2021}
}
Owner
ZJU3DV
ZJU3DV is a research group of State Key Lab of CAD&CG, Zhejiang University. We focus on the research of 3D computer vision, SLAM and AR.
ZJU3DV
novel deep learning research works with PaddlePaddle

Research 发布基于飞桨的前沿研究工作,包括CV、NLP、KG、STDM等领域的顶会论文和比赛冠军模型。 目录 计算机视觉(Computer Vision) 自然语言处理(Natrual Language Processing) 知识图谱(Knowledge Graph) 时空数据挖掘(Spa

1.5k Dec 29, 2022
Human Pose Detection on EdgeTPU

Coral PoseNet Pose estimation refers to computer vision techniques that detect human figures in images and video, so that one could determine, for exa

google-coral 476 Dec 31, 2022
PyTorch implementation of Decoupling Value and Policy for Generalization in Reinforcement Learning

PyTorch implementation of Decoupling Value and Policy for Generalization in Reinforcement Learning

48 Dec 08, 2022
Physics-Aware Training (PAT) is a method to train real physical systems with backpropagation.

Physics-Aware Training (PAT) is a method to train real physical systems with backpropagation. It was introduced in Wright, Logan G. & Onodera, Tatsuhiro et al. (2021)1 to train Physical Neural Networ

McMahon Lab 230 Jan 05, 2023
An Implementation of Fully Convolutional Networks in Tensorflow.

Update An example on how to integrate this code into your own semantic segmentation pipeline can be found in my KittiSeg project repository. tensorflo

Marvin Teichmann 1.1k Dec 12, 2022
Vector AI — A platform for building vector based applications. Encode, query and analyse data using vectors.

Vector AI is a framework designed to make the process of building production grade vector based applications as quickly and easily as possible. Create

Vector AI 267 Dec 23, 2022
Implementation of Graph Transformer in Pytorch, for potential use in replicating Alphafold2

Graph Transformer - Pytorch Implementation of Graph Transformer in Pytorch, for potential use in replicating Alphafold2. This was recently used by bot

Phil Wang 97 Dec 28, 2022
BLEND: A Fast, Memory-Efficient, and Accurate Mechanism to Find Fuzzy Seed Matches

BLEND is a mechanism that can efficiently find fuzzy seed matches between sequences to significantly improve the performance and accuracy while reducing the memory space usage of two important applic

SAFARI Research Group at ETH Zurich and Carnegie Mellon University 19 Dec 26, 2022
Bayesian Optimization using GPflow

Note: This package is for use with GPFlow 1. For Bayesian optimization using GPFlow 2 please see Trieste, a joint effort with Secondmind. GPflowOpt GP

GPflow 257 Dec 26, 2022
Repository for "Improving evidential deep learning via multi-task learning," published in AAAI2022

Improving evidential deep learning via multi task learning It is a repository of AAAI2022 paper, “Improving evidential deep learning via multi-task le

deargen 11 Nov 19, 2022
This is the repository for Learning to Generate Piano Music With Sustain Pedals

SusPedal-Gen This is the official repository of Learning to Generate Piano Music With Sustain Pedals Demo Page Dataset The dataset used in this projec

Joann Ching 12 Sep 02, 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
PyTorch implementation code for the paper MixCo: Mix-up Contrastive Learning for Visual Representation

How to Reproduce our Results This repository contains PyTorch implementation code for the paper MixCo: Mix-up Contrastive Learning for Visual Represen

opcrisis 46 Dec 15, 2022
An improvement of FasterGICP: Acceptance-rejection Sampling based 3D Lidar Odometry

fasterGICP This package is an improvement of fast_gicp Please cite our paper if possible. W. Jikai, M. Xu, F. Farzin, D. Dai and Z. Chen, "FasterGICP:

79 Dec 31, 2022
Experiments with differentiable stacks and queues in PyTorch

Please use stacknn-core instead! StackNN This project implements differentiable stacks and queues in PyTorch. The data structures are implemented in s

Will Merrill 141 Oct 06, 2022
Statsmodels: statistical modeling and econometrics in Python

About statsmodels statsmodels is a Python package that provides a complement to scipy for statistical computations including descriptive statistics an

statsmodels 8.1k Jan 02, 2023
Official Pytorch implementation of Meta Internal Learning

Official Pytorch implementation of Meta Internal Learning

10 Aug 24, 2022
simple artificial intelligence utilities

Simple AI Project home: http://github.com/simpleai-team/simpleai This lib implements many of the artificial intelligence algorithms described on the b

921 Dec 08, 2022
This is the implementation of the paper "Self-supervised Outdoor Scene Relighting"

Self-supervised Outdoor Scene Relighting This is the implementation of the paper "Self-supervised Outdoor Scene Relighting". The model is implemented

Ye Yu 24 Dec 17, 2022
A Closer Look at Structured Pruning for Neural Network Compression

A Closer Look at Structured Pruning for Neural Network Compression Code used to reproduce experiments in https://arxiv.org/abs/1810.04622. To prune, w

Bayesian and Neural Systems Group 140 Dec 05, 2022