Official implementation of NPMs: Neural Parametric Models for 3D Deformable Shapes - ICCV 2021

Overview

NPMs: Neural Parametric Models

Project Page | Paper | ArXiv | Video


NPMs: Neural Parametric Models for 3D Deformable Shapes
Pablo Palafox, Aljaz Bozic, Justus Thies, Matthias Niessner, Angela Dai

Citation

@article{palafox2021npms
    author        = {Palafox, Pablo and Bo{\v{z}}i{\v{c}}, Alja{\v{z}} and Thies, Justus and Nie{\ss}ner, Matthias and Dai, Angela},
    title         = {NPMs: Neural Parametric Models for 3D Deformable Shapes},
    journal       = {arXiv preprint arXiv:2104.00702},
    year          = {2021},
}

Install

You can either pull our docker image, build it yourself with the provided Dockerfile or build the project from source.

Pull Docker Image

docker pull ppalafox/npms:latest

You can now run an interactive container of the image you just built (before that, navigate to npms):

cd npms
docker run --ipc=host -it --name npms --gpus=all -v $PWD:/app -v /cluster:/cluster npms:latest bash

Build Docker Image

Run the following from within the root of this project (where Dockerfile lives) to build a docker image with all required dependencies.

docker build . -t npms

You can now run an interactive container of the image you just built (before that, navigate to npms):

cd npms
docker run --ipc=host -it --name npms --gpus=all -v $PWD:/app -v /cluster:/cluster npms:latest bash

Of course, you'll have to specify you're own paths to the volumes you'd like to mount using the -v flag.

Build from source

A linux system with cuda is required for the project.

The npms_env.yml file contains (hopefully) all necessary python dependencies for the project. To conveniently install them automatically with anaconda you can use:

conda env create -f npms_env.yml
conda activate npms
Other dependencies

We need some other dependencies. Starting from the root folder of this project, we'll do the following...

  • Compile the csrc folder:
cd csrc 
python setup.py install
cd ..
  • We need some libraries from IFNet. In particular, we need libmesh and libvoxelize from that repo. They are already placed within external. (Check the corresponding LICENSE). To build these, proceed as follows:
cd libmesh/
python setup.py build_ext --inplace
cd ../libvoxelize/
python setup.py build_ext --inplace
cd ..
chmod +x build_gaps.sh
./build_gaps.sh

       You can make sure it's built properly by running:

chmod +x gaps_is_installed.sh
./gaps_is_installed.sh

       You should get a "Ready to go!" as output.

You can now navigate back to the root folder: cd ..

Data Preparation

As an example, let's have a quick overview of what the process would look like in order to generate training data from the CAPE dataset.

Download their dataset, by registering and accepting their terms. Once you've followed their steps to download the dataset, you should have a folder named cape_release.

In npms/configs_train/config_train_HUMAN.py, set the variable ROOT to point to the folder where you want your data to live in. Then:

cd <ROOT>
mkdir data

And place cape_release within data.

Download SMPL models

Register here to get access to SMPL body models. Then, under the downloads tab, download the models. Refer to https://github.com/vchoutas/smplx#model-loading for more details.

From within the root folder of this project, run:

cd npms/body_model
mkdir smpl

And place the .pkl files you just downloaded under npms/body_model/smpl. Now change their names, such that you have something like:

body_models
│── smpl
│  │── smpl
│  │  └── SMPL_FEMALE.pkl
│  │  └── SMPL_MALE.pkl
│  │  └── SMPL_NEUTRAL.pkl

Preprocess the raw CAPE

Now let's process the raw data in order to generate training samples for our NPM.

cd npms/data_processing
python prepare_cape_data.py

Then, we normalize the preprocessed dataset, such that the meshes reside within a bounding box with boundaries bbox_min=-0.5 and bbox_max=0.5.

# We're within npms/data_processing
python normalize_dataset.py

At this point, we can generate training samples for both the shape and the pose MLP. An extra step would be required if our t-poses (<ROOT>/datasets/cape/a_t_pose/000000/mesh_normalized.ply) were not watertight. We'd need to run multiview_to_watertight_mesh.py. Since CAPE is already watertight, we don't need to worry about this.

About labels.json and labels_tpose.json

One last thing before actually generating the samples is to create some "labels" files that specify the paths to the dataset we wanna create. Under the folder ZSPLITS_HUMAN we have copied some examples.

Within it, you can find other folders containing datasets in the form of the paths to the actual data. For example, CAPE-SHAPE-TRAIN-35id, which in turn contains two files: labels_tpose and labels. They define datasets in a flexible way, by means of a list of dictionaries, where each dictionary holds the paths to a particular sample. You'll get a feeling of why we have a labels.json and labels_tpose.json by running the following sections to generate data, as well as when you dive into actually training a new NPM from scratch.

Go ahead and copy the folder ZSPLITS_HUMAN into <ROOT>/datasets, where ROOT is a path to your datasets that you can specify in npms/configs_train/config_train_HUMAN.py. If you followed along until now, within <ROOT>/datasets you should already have the preprocessed <ROOT>/datasets/cape dataset.

# Assuming you're in the root folder of the project
cp -r ZSPLITS_HUMAN <ROOT>/datasets

Note: within data_scripts you can find helpful scripts to generate your own labels.json and labels_tpose.json from a dataset. Check out the npms/data_scripts/README.md for a brief overview on these scripts.

SDF samples

Generate SDF samples around our identities in their t-pose in order to train the shape latent space.

# We're within npms/data_processing
python sample_boundary_sdf_gaps.py
Flow samples

Generate correspondences from an identity in its t-pose to its posed instances.

# We're within npms/data_processing
python sample_flow.py -sigma 0.01
python sample_flow.py -sigma 0.002

We're done with generating data for CAPE! This was just an example using CAPE, but as you've seen, the only thing you need to have is a dataset of meshes:

  • we need t-pose meshes for each identity in the dataset, and we can use multiview_to_watertight_mesh.py to make these t-pose meshes watertight, to then sample points and their SDF values.
  • for a given identity, we need to have surface correspondences between the t-pose and the posed meshes (but note that these posed meshes don't need to be watertight).

Training an NPM

Shape Latent Space

Set only_shape=True in config_train_HUMAN.py. Then, from within the npms folder, start the training:

python train.py

Pose Latent Space

Set only_shape=False in config_train_HUMAN.py. We now need to load the best checkpoint from training the shape MLP. For that, go to config_train_HUMAN.py, make sure init_from = True in its first appearance in the file, and then set this same variable to your pretrained model name later in the file:

init_from = "<model_name>"
checkpoint = <the_epoch_number_you_want_to_load>

Then, from within the npms folder, start the training:

python train.py

Once we reach convergence, you're done. You know have latent spaces of shape and pose that you can play with.

You could:

Fitting an NPM to a Monocular Depth Sequence

Code Initialization

When fitting an NPM to monocular depth sequence, it is recommended that we have a relatively good initialization of our shape and pose codes to avoid falling into local minima. To this end, we are gonna learn a shape and a pose encoder that map an input depth map to a shape and pose code, respectively.

We basically use the shape and pose codes that we've learned during training time as targets for training the shape and pose encoders. You can use prepare_labels_shape_encoder.py and prepare_labels_pose_encoder.py to generate the dataset labels for this encoder training.

You basically have to train them like so:

python encode_shape_codes.py
python encode_pose_codes.py

And regarding the data you need for training the encoder...

Data preparation: Take a look at the scripts voxelize_multiview.py to prepare the single-view voxel grids that we require to train our encoders.

Test-time Optimization

Now you can fit NPMs to an input monocular depth sequence:

python fit_npm.py -o -d HUMAN -e <EXTRA_NAME_IF_YOU_WANT>

The -o flag for optimize; the -d flag for the kind of dataset (HUMAN, MANO) and the -e flag for appending a string to the name of the current optimization run.

You'll have to take a look at config_eval_HUMAN.py and set the name of your trained model (exp_model) and its hyperparameters, as well as the dataset name dataset_name you want to evaluate on.

It's definitely not the cleanest and easiest config file, sorry for that!

Data preparation: Take a look at the scripts compute_partial_sdf_grid.py to prepare the single-view SDF grid that we assume as input at test-time.

Visualization

With the following script you can visualize your fitting. Have a look at config_viz_OURS.py and set the name of your trained model (exp_model) as well as the name of your optimization run (run_name) of test-time fitting you just computed.

python viz_all_methods.py -m NPM -d HUMAN

There are a bunch of other scripts for visualization. They're definitely not cleaned-up, but I kept them here anyways in case they might be useful for you as a starting point.

Compute metrics

python compute_errors.py -n <name_of_optimization_run>

Latent-space Interpolation

Check out the files:

Shape and Pose Transfer

Check out the files:

Pretrained Models

Download pre-trained models here

License

NPMs is relased under the MIT License. See the LICENSE file for more details.

Check the corresponding LICENSES of the projects under the external folder.

For instance, we make use of libmesh and libvoxelize, which come from IFNets. Please check their LICENSE.

We need some helper functions from LDIF. Namely, base_util.py and file_util.py, which should be already under utils. Check the license and copyright in those files.

Owner
PabloPalafox
PhD Student @ TU Munich w/ Angela Dai
PabloPalafox
LEDNet: A Lightweight Encoder-Decoder Network for Real-time Semantic Segmentation

LEDNet: A Lightweight Encoder-Decoder Network for Real-time Semantic Segmentation Table of Contents: Introduction Project Structure Installation Datas

Yu Wang 492 Dec 02, 2022
A repo with study material, exercises, examples, etc for Devnet SPAUTO

MPLS in the SDN Era -- DevNet SPAUTO Get right to the study material: Checkout the Wiki! A lab topology based on MPLS in the SDN era book used for 30

Hugo Tinoco 67 Nov 16, 2022
Training code and evaluation benchmarks for the "Self-Supervised Policy Adaptation during Deployment" paper.

Self-Supervised Policy Adaptation during Deployment PyTorch implementation of PAD and evaluation benchmarks from Self-Supervised Policy Adaptation dur

Nicklas Hansen 101 Nov 01, 2022
MVS2D: Efficient Multi-view Stereo via Attention-Driven 2D Convolutions

MVS2D: Efficient Multi-view Stereo via Attention-Driven 2D Convolutions Project Page | Paper If you find our work useful for your research, please con

96 Jan 04, 2023
Code for the paper "Curriculum Dropout", ICCV 2017

Curriculum Dropout Dropout is a very effective way of regularizing neural networks. Stochastically "dropping out" units with a certain probability dis

Pietro Morerio 21 Jan 02, 2022
Adversarial Texture Optimization from RGB-D Scans (CVPR 2020).

AdversarialTexture Adversarial Texture Optimization from RGB-D Scans (CVPR 2020). Scanning Data Download Please refer to data directory for details. B

Jingwei Huang 153 Nov 28, 2022
AdaShare: Learning What To Share For Efficient Deep Multi-Task Learning

AdaShare: Learning What To Share For Efficient Deep Multi-Task Learning (NeurIPS 2020) Introduction AdaShare is a novel and differentiable approach fo

94 Dec 22, 2022
Code for "Learning Canonical Representations for Scene Graph to Image Generation", Herzig & Bar et al., ECCV2020

Learning Canonical Representations for Scene Graph to Image Generation (ECCV 2020) Roei Herzig*, Amir Bar*, Huijuan Xu, Gal Chechik, Trevor Darrell, A

roei_herzig 24 Jul 07, 2022
TyXe: Pyro-based BNNs for Pytorch users

TyXe: Pyro-based BNNs for Pytorch users TyXe aims to simplify the process of turning Pytorch neural networks into Bayesian neural networks by leveragi

87 Jan 03, 2023
Google-drive-to-sqlite - Create a SQLite database containing metadata from Google Drive

google-drive-to-sqlite Create a SQLite database containing metadata from Google

Simon Willison 140 Dec 04, 2022
Plenoxels: Radiance Fields without Neural Networks

Plenoxels: Radiance Fields without Neural Networks Alex Yu*, Sara Fridovich-Keil*, Matthew Tancik, Qinhong Chen, Benjamin Recht, Angjoo Kanazawa UC Be

Sara Fridovich-Keil 81 Dec 25, 2022
Second-Order Neural ODE Optimizer, NeurIPS 2021 spotlight

Second-order Neural ODE Optimizer (NeurIPS 2021 Spotlight) [arXiv] ✔️ faster convergence in wall-clock time | ✔️ O(1) memory cost | ✔️ better test-tim

Guan-Horng Liu 39 Oct 22, 2022
Official pytorch implementation of the AAAI 2021 paper Semantic Grouping Network for Video Captioning

Semantic Grouping Network for Video Captioning Hobin Ryu, Sunghun Kang, Haeyong Kang, and Chang D. Yoo. AAAI 2021. [arxiv] Environment Ubuntu 16.04 CU

Hobin Ryu 43 Nov 25, 2022
Toward Realistic Single-View 3D Object Reconstruction with Unsupervised Learning from Multiple Images (ICCV 2021)

Table of Content Introduction Getting Started Datasets Installation Experiments Training & Testing Pretrained models Texture fine-tuning Demo Toward R

VinAI Research 42 Dec 05, 2022
Generate image analogies using neural matching and blending

neural image analogies This is basically an implementation of this "Image Analogies" paper, In our case, we use feature maps from VGG16. The patch mat

Adam Wentz 3.5k Jan 08, 2023
Source code of our TTH paper: Targeted Trojan-Horse Attacks on Language-based Image Retrieval.

Targeted Trojan-Horse Attacks on Language-based Image Retrieval Source code of our TTH paper: Targeted Trojan-Horse Attacks on Language-based Image Re

fine 7 Aug 23, 2022
Versatile Generative Language Model

Versatile Generative Language Model This is the implementation of the paper: Exploring Versatile Generative Language Model Via Parameter-Efficient Tra

Zhaojiang Lin 17 Dec 02, 2022
Unicorn can be used for performance analyses of highly configurable systems with causal reasoning

Unicorn can be used for performance analyses of highly configurable systems with causal reasoning. Users or developers can query Unicorn for a performance task.

AISys Lab 27 Jan 05, 2023
PyTorch implementation of some learning rate schedulers for deep learning researcher.

pytorch-lr-scheduler PyTorch implementation of some learning rate schedulers for deep learning researcher. Usage WarmupReduceLROnPlateauScheduler Visu

Soohwan Kim 59 Dec 08, 2022
Text-Based Ideal Points

Text-Based Ideal Points Source code for the paper: Text-Based Ideal Points by Keyon Vafa, Suresh Naidu, and David Blei (ACL 2020). Update (June 29, 20

Keyon Vafa 37 Oct 09, 2022