Official Pytorch implementation of the paper "Action-Conditioned 3D Human Motion Synthesis with Transformer VAE", ICCV 2021

Related tags

Deep LearningACTOR
Overview

ACTOR

Official Pytorch implementation of the paper "Action-Conditioned 3D Human Motion Synthesis with Transformer VAE", ICCV 2021.

Please visit our webpage for more details.

teaser

Bibtex

If you find this code useful in your research, please cite:

@INPROCEEDINGS{petrovich21actor,
  title     = {Action-Conditioned 3{D} Human Motion Synthesis with Transformer {VAE}},
  author    = {Petrovich, Mathis and Black, Michael J. and Varol, G{\"u}l},
  booktitle = {International Conference on Computer Vision (ICCV)},
  year      = {2021}
}

Installation 👷

1. Create conda environment

conda env create -f environment.yml
conda activate actor

Or install the following packages in your pytorch environnement:

pip install tensorboard
pip install matplotlib
pip install ipdb
pip install sklearn
pip install pandas
pip install tqdm
pip install imageio
pip install pyyaml
pip install smplx
pip install chumpy

The code was tested on Python 3.8 and PyTorch 1.7.1.

2. Download the datasets

For all the datasets, be sure to read and follow their license agreements, and cite them accordingly.

For more information about the datasets we use in this research, please check this page, where we provide information on how we obtain/process the datasets and their citations. Please cite the original references for each of the datasets as indicated.

Please install gdown to download directly from Google Drive and then:

bash prepare/download_datasets.sh

Update: Unfortunately, the NTU13 dataset (derived from NTU) is no longer available.

3. Download some SMPL files

bash prepare/download_smpl_files.sh

This will download the SMPL neutral model from this github repo and additionnal files.

If you want to integrate the male and the female versions, you must:

  • Download the models from the SMPL website
  • Move them to models/smpl
  • Change the SMPL_MODEL_PATH variable in src/config.py accordingly.

4. Download the action recogition models

bash prepare/download_recognition_models.sh

Action recognition models are used to extract motion features for evaluation.

For NTU13 and HumanAct12, we use the action recognition models directly from Action2Motion project.

For the UESTC dataset, we train an action recognition model using STGCN, with this command line:

python -m src.train.train_stgcn --dataset uestc --extraction_method vibe --pose_rep rot6d --num_epochs 100 --snapshot 50 --batch_size 64 --lr 0.0001 --num_frames 60 --view all --sampling conseq --sampling_step 1 --glob --no-translation --folder recognition_training

How to use ACTOR 🚀

NTU13

Training

python -m src.train.train_cvae --modelname cvae_transformer_rc_rcxyz_kl --pose_rep rot6d --lambda_kl 1e-5 --jointstype vertices --batch_size 20 --num_frames 60 --num_layers 8 --lr 0.0001 --glob --translation --no-vertstrans --dataset DATASET --num_epochs 2000 --snapshot 100 --folder exp/ntu13

HumanAct12

Training

python -m src.train.train_cvae --modelname cvae_transformer_rc_rcxyz_kl --pose_rep rot6d --lambda_kl 1e-5 --jointstype vertices --batch_size 20 --num_frames 60 --num_layers 8 --lr 0.0001 --glob --translation --no-vertstrans --dataset humanact12 --num_epochs 5000 --snapshot 100 --folder exps/humanact12

UESTC

Training

python -m src.train.train_cvae --modelname cvae_transformer_rc_rcxyz_kl --pose_rep rot6d --lambda_kl 1e-5 --jointstype vertices --batch_size 20 --num_frames 60 --num_layers 8 --lr 0.0001 --glob --translation --no-vertstrans --dataset uestc --num_epochs 1000 --snapshot 100 --folder exps/uestc

Evaluation

python -m src.evaluate.evaluate_cvae PATH/TO/checkpoint_XXXX.pth.tar --batch_size 64 --niter 20

This script will evaluate the trained model, on the epoch XXXX, with 20 different seeds, and put all the results in PATH/TO/evaluation_metrics_XXXX_all.yaml.

If you want to get a table with mean and interval, you can use this script:

python -m src.evaluate.tables.easy_table PATH/TO/evaluation_metrics_XXXX_all.yaml

Pretrained models

You can download pretrained models with this script:

bash prepare/download_pretrained_models.sh

Visualization

Grid of stick figures

 python -m src.visualize.visualize_checkpoint PATH/TO/CHECKPOINT.tar --num_actions_to_sample 5  --num_samples_per_action 5

Each line corresponds to an action. The first column on the right represents a movement of the dataset, and the second column represents the reconstruction of the movement (via encoding/decoding). All other columns on the left are generations with random noise.

Example

ntugrid.gif

Generating and rendering SMPL meshes

Additional dependencies

pip install trimesh
pip install pyrender
pip install imageio-ffmpeg

Generate motions

python -m src.generate.generate_sequences PATH/TO/CHECKPOINT.tar --num_samples_per_action 10 --cpu

It will generate 10 samples per action, and store them in PATH/TO/generation.npy.

Render motions

python -m src.render.rendermotion PATH/TO/generation.npy

It will render the sequences into this folder PATH/TO/generation/.

Examples
Pickup Raising arms High knee running Bending torso Knee raising

Overview of the available models

List of models

modeltype architecture losses
cvae fc rc
gru rcxyz
transformer kl

Construct a model

Follow this: {modeltype}_{architecture} + "_".join(*losses)

For example for the cvae model with Transformer encoder/decoder and with rc, rcxyz and kl loss, you can use: --modelname cvae_transformer_rc_rcxyz_kl.

License

This code is distributed under an MIT LICENSE.

Note that our code depends on other libraries, including SMPL, SMPL-X, PyTorch3D, and uses datasets which each have their own respective licenses that must also be followed.

Owner
Mathis Petrovich
PhD student mainly interested in Human Body Shape Analysis, Computer Vision and Optimal Transport.
Mathis Petrovich
Code for "OctField: Hierarchical Implicit Functions for 3D Modeling (NeurIPS 2021)"

OctField(Jittor): Hierarchical Implicit Functions for 3D Modeling Introduction This repository is code release for OctField: Hierarchical Implicit Fun

55 Dec 08, 2022
MediaPipe Kullanarak İleri Seviye Bilgisayarla Görü

MediaPipe Kullanarak İleri Seviye Bilgisayarla Görü

Burak Bagatarhan 12 Mar 29, 2022
UFPR-ADMR-v2 Dataset

UFPR-ADMR-v2 Dataset The UFPR-ADMRv2 dataset contains 5,000 dial meter images obtained on-site by employees of the Energy Company of Paraná (Copel), w

Gabriel Salomon 8 Sep 29, 2022
AFL binary instrumentation

E9AFL --- Binary AFL E9AFL inserts American Fuzzy Lop (AFL) instrumentation into x86_64 Linux binaries. This allows binaries to be fuzzed without the

242 Dec 12, 2022
Accelerated SMPL operation, commonly used in generate 3D human mesh, STAR included.

SMPL2 An enchanced and accelerated SMPL operation which commonly used in 3D human mesh generation. It takes a poses, shapes, cam_trans as inputs, outp

JinTian 20 Oct 17, 2022
Table-Extractor 表格抽取

(t)able-(ex)tractor 本项目旨在实现pdf表格抽取。 Models 版面分析模块(Yolo) 表格结构抽取(ResNet + Transformer) 文字识别模块(CRNN + CTC Loss) Acknowledgements TableMaster attention-i

2 Jan 15, 2022
A big endian Gentoo port developed on a Pine64.org RockPro64

Gentoo-aarch64_be A big endian Gentoo port developed on a Pine64.org RockPro64 The endian wars are over... little endian won. As a result, it is incre

Rory Bolt 6 Dec 07, 2022
Collection of tasks for fast prototyping, baselining, finetuning and solving problems with deep learning.

Collection of tasks for fast prototyping, baselining, finetuning and solving problems with deep learning Installation

Pytorch Lightning 1.6k Jan 08, 2023
Code for "Unsupervised Layered Image Decomposition into Object Prototypes" paper

DTI-Sprites Pytorch implementation of "Unsupervised Layered Image Decomposition into Object Prototypes" paper Check out our paper and webpage for deta

40 Dec 22, 2022
PCGNN - Procedural Content Generation with NEAT and Novelty

PCGNN - Procedural Content Generation with NEAT and Novelty Generation Approach — Metrics — Paper — Poster — Examples PCGNN - Procedural Content Gener

Michael Beukman 8 Dec 10, 2022
Source code for "Pack Together: Entity and Relation Extraction with Levitated Marker"

PL-Marker Source code for Pack Together: Entity and Relation Extraction with Levitated Marker. Quick links Overview Setup Install Dependencies Data Pr

THUNLP 173 Dec 30, 2022
A high performance implementation of HDBSCAN clustering.

HDBSCAN HDBSCAN - Hierarchical Density-Based Spatial Clustering of Applications with Noise. Performs DBSCAN over varying epsilon values and integrates

2.3k Jan 02, 2023
A task-agnostic vision-language architecture as a step towards General Purpose Vision

Towards General Purpose Vision Systems By Tanmay Gupta, Amita Kamath, Aniruddha Kembhavi, and Derek Hoiem Overview Welcome to the official code base f

AI2 79 Dec 23, 2022
CMUA-Watermark: A Cross-Model Universal Adversarial Watermark for Combating Deepfakes (AAAI2022)

CMUA-Watermark The official code for CMUA-Watermark: A Cross-Model Universal Adversarial Watermark for Combating Deepfakes (AAAI2022) arxiv. It is bas

50 Nov 26, 2022
Code accompanying the paper on "An Empirical Investigation of Domain Generalization with Empirical Risk Minimizers" published at NeurIPS, 2021

Code for "An Empirical Investigation of Domian Generalization with Empirical Risk Minimizers" (NeurIPS 2021) Motivation and Introduction Domain Genera

Meta Research 15 Dec 27, 2022
Implementation of Self-supervised Graph-level Representation Learning with Local and Global Structure (ICML 2021).

Self-supervised Graph-level Representation Learning with Local and Global Structure Introduction This project is an implementation of ``Self-supervise

MilaGraph 50 Dec 09, 2022
Library for fast text representation and classification.

fastText fastText is a library for efficient learning of word representations and sentence classification. Table of contents Resources Models Suppleme

Facebook Research 24.1k Jan 01, 2023
A very tiny, very simple, and very secure file encryption tool.

Picocrypt is a very tiny (hence "Pico"), very simple, yet very secure file encryption tool. It uses the modern ChaCha20-Poly1305 cipher suite as well

Evan Su 1k Dec 30, 2022
PyTorch implementation of the ExORL: Exploratory Data for Offline Reinforcement Learning

ExORL: Exploratory Data for Offline Reinforcement Learning This is an original PyTorch implementation of the ExORL framework from Don't Change the Alg

Denis Yarats 52 Jan 01, 2023
Codebase for Time-series Generative Adversarial Networks (TimeGAN)

Codebase for Time-series Generative Adversarial Networks (TimeGAN)

Jinsung Yoon 532 Dec 31, 2022