Implementation of "Large Steps in Inverse Rendering of Geometry"

Overview

Large Steps in Inverse Rendering of Geometry

Logo

ACM Transactions on Graphics (Proceedings of SIGGRAPH Asia), December 2021.
Baptiste Nicolet · Alec Jacobson · Wenzel Jakob

Paper PDF Project Page



Table of Contents
  1. Installation
  2. Parameterization
  3. Running the experiments
  4. Repository structure
  5. License
  6. Citation
  7. Acknowledgments


Installation

This repository contains both the operators needed to use our parameterization of vertex positions of meshes as well as the code for the experiments we show in the paper.

Parameterization package installation

If you are only interested in using our parameterization in an existing (PyTorch based) pipeline, we have made it available to install via pip. However, it depends on cupy and scikit-sparse, which need to be installed manually beforehand. We first need to install the suitesparse dependency.

# Ubuntu/Debian
apt install libsuitesparse-dev
# Fedora
yum install suitesparse-devel
# Arch linux
pacman -S suitesparse
# Mac OS X
brew install suite-sparse

Then install the python dependencies via pip:

pip install cupy-cudaXXX # Adjust this to your CUDA version, following https://docs.cupy.dev/en/stable/install.html#installing-cupy
pip install scikit-sparse

Then, install our package:

pip install largesteps

This will install the largesteps module. This only contains the parameterization logic implemented as a PyTorch custom operator. See the tutorial for an example use case.

Cloning the repository

Otherwise, if you want to reproduce the experiments from the paper, you can clone this repo and install the module locally. Make sure you have installed the cupy and scikit-sparse dependencies mentioned above before.

git clone --recursive [email protected]:rgl-epfl/large-steps-pytorch.git
cd large-steps-pytorch
pip install .

The experiments in this repository depend on PyTorch. Please follow instructions on the PyTorch website to install it.

To install nvdiffrast and the Botsch-Kobbelt remesher, which are provided as submodules, please run the setup_dependencies.sh script.

To install the other dependencies needed to run the experiments, also run:

pip install -r requirements.txt

⚠️ On Linux, nvdiffrast requires using g++ to compile some PyTorch extensions, make sure this is your default compiler:

export CC=gcc && CXX=g++

Rendering the figures will also require installing blender. You can specify the name of the blender executable you wish to use in scripts/constants.py

Downloading the scenes

The scenes for the experiments can be downloaded here. Please extract the archive at the toplevel of this repository.

Parameterization

In a nutshell, our parameterization can be obtained in just a few lines:

# Given tensors v and f containing vertex positions and faces
from largesteps.geometry import laplacian_uniform, compute_matrix
from largesteps.parameterize import to_differential, from_differential
L = laplacian_uniform(v, f)
M = compute_matrix(L, lambda_=10)
u = to_differential(v, M)

compute_matrix returns the parameterization matrix M = I + λL. This function takes another parameter, alpha, which leads to a slightly different, but equivalent, formula for the matrix: M = (1-α)I + αL, with α ∈ [0,1[. With this formula, the scale of the matrix M has the same order of magnitude regardless of α.

M = compute_matrix(L, alpha=0.9)

Then, vertex coordinates can be retrieved as:

v = from_differential(u, M, method='Cholesky')

This will in practice perform a cache lookup for a solver associated to the matrix M (and instantiate one if not found) and solve the linear system Mv = u. Further calls to from_differential with the same matrix will use the solver stored in the cache. Since this operation is implemented as a differentiable PyTorch operation, there is nothing more to be done to optimize this parameterization.

Running the experiments

You can then run the experiments in the figures folder, in which each subfolder corresponds to a figure in the paper, and contains two files:

  • generate_data.py: contains the script to run the experiment and write the output to the directory specified in scripts/constants.py
  • figure.ipynb: contains the script generating the figure, assuming generate_data.py has been run before and the output written to the directory specified in scripts/constants.py

We provide the scripts for the following figures:

  • Fig. 1 -> teaser
  • Fig. 3 -> multiscale
  • Fig. 5 -> remeshing
  • Fig. 6 -> reg_fail
  • Fig. 7 -> comparison
  • Fig. 8 -> viewpoints
  • Fig. 9 -> influence

⚠️ Several experiments are equal-time comparisons ran on a Linux Ryzen 3990X workstation with a TITAN RTX graphics card. In order to ensure reproducibility, we have frozen the step counts for each method in these experiments.

Repository structure

The largesteps folder contains the parameterization module made available via pip. It contains:

  • geometry.py: contains the laplacian matrix computation.
  • optimize.py: contains the AdamUniform optimizer implementation
  • parameterize.py: contains the actual parameterization code, implemented as a to_differential and from_differential function.
  • solvers.py: contains the Cholesky and conjugate gradients solvers used to convert parameterized coordinates back to vertex coordinates.

Other functions used for the experiments are included in the scripts folder:

  • blender_render.py: utility script to render meshes inside blender
  • constants.py: contains paths to different useful folders (scenes, remesher, etc.)
  • geometry.py: utility geometry functions (normals computation, edge length, etc.)
  • io_ply.py: PLY mesh file loading
  • load_xml.py: XML scene file loading
  • main.py: contains the main optimization function
  • preamble.py: utility scipt to a import redundant modules for the figures
  • render.py: contains the rendering logic, using nvdiffrast

License

This code is provided under a 3-clause BSD license that can be found in the LICENSE file. By using, distributing, or contributing to this project, you agree to the terms and conditions of this license.

Citation

If you use this code for academic research, please cite our method using the following BibTeX entry:

@article{Nicolet2021Large,
    author = "Nicolet, Baptiste and Jacobson, Alec and Jakob, Wenzel",
    title = "Large Steps in Inverse Rendering of Geometry",
    journal = "ACM Transactions on Graphics (Proceedings of SIGGRAPH Asia)",
    volume = "40",
    number = "6",
    year = "2021",
    month = dec,
    doi = "10.1145/3478513.3480501",
    url = "https://rgl.epfl.ch/publications/Nicolet2021Large"
}

Acknowledgments

The authors would like to thank Delio Vicini for early discussions about this project, Silvia Sellán for sharing her remeshing implementation and help for the figures, as well as Hsueh-Ti Derek Liu for his advice in making the figures. Also, thanks to Miguel Crespo for making this README template.

Comments
  • render faster

    render faster

    fyi you can speed up rendering by ~50%. Replace https://github.com/rgl-epfl/large-steps-pytorch/blob/e03b40e237276b0efe32d022f5886b81db45bc3c/scripts/render.py#L210-L213 by

    vert_light = self.sh.eval(n).contiguous()
    light = dr.interpolate(vert_light[None, ...], rast, f)[0]
    
    opened by wpalfi 3
  • suzanne.xml is missing

    suzanne.xml is missing

    I've just cloned the project and I'm trying to run the Tutorial.

    The whole directory scenes/suzanne and the suzanne.xml is missing

    ---------------------------------------------------------------------------
    FileNotFoundError                         Traceback (most recent call last)
    <ipython-input-7-8c8db06f0156> in <module>
          1 # Load the scene
          2 filepath = os.path.join(os.getcwd(), "scenes", "suzanne", "suzanne.xml")
    ----> 3 scene_params = load_scene(filepath)
          4 
          5 # Load reference shape
    
    ~/Desktop/large-steps-pytorch/scripts/load_xml.py in load_scene(filepath)
         58     assert ext == ".xml", f"Unexpected file type: '{ext}'"
         59 
    ---> 60     tree = ET.parse(filepath)
         61     root = tree.getroot()
         62 
    
    ~/miniconda3/envs/pytorch3d_06/lib/python3.8/xml/etree/ElementTree.py in parse(source, parser)
       1200     """
       1201     tree = ElementTree()
    -> 1202     tree.parse(source, parser)
       1203     return tree
       1204 
    
    ~/miniconda3/envs/pytorch3d_06/lib/python3.8/xml/etree/ElementTree.py in parse(self, source, parser)
        582         close_source = False
        583         if not hasattr(source, "read"):
    --> 584             source = open(source, "rb")
        585             close_source = True
        586         try:
    
    FileNotFoundError: [Errno 2] No such file or directory: '/home/bobi/Desktop/large-steps-pytorch/scenes/suzanne/suzanne.xml'
    
    
    opened by bobiblazeski 3
  • How to compile on Windows?

    How to compile on Windows?

    I try to build this project on my windows for a week, and unfortunately failed, can you give me the specific process of build the project on windows? :) The failure I met is related to libs in the ext/ (mainly numpyeigen).

    opened by cx-zzz 2
  • Program exits when running from_differential

    Program exits when running from_differential

    Hi, I got problems after updating to the latest 0.2.0 version. When my program invoked the from_differential function, it got stuck for a little while, and then exited directly. Nothing (warnings/errors/...) was shown on my prompt, and so I could not figure out what happened. However, the initial 0.1.1 version worked well. Tested on: Windows 10, AMD Ryzen 9 5900HX with Radeon Graphics @ 3.30GHz 16GB, GeForce RTX 3070 Laptop GPU 8GB.

    opened by 7DBW13 2
  • Memory leak when processing multiple meshes

    Memory leak when processing multiple meshes

    GPU memory is not properly freed when switching to other meshes, eventually leading to CUSPARSE_STATUS_ALLOC_FAILED:

    Traceback (most recent call last):
      File "scripts/show_largesteps_memory_leak.py", line 16, in <module>
        v = from_differential(M, u, 'Cholesky')
      File "/home/xuzhen/miniconda3/envs/flame/lib/python3.8/site-packages/largesteps/parameterize.py", line 51, in from_differential
        solver = CholeskySolver(L)
      File "/home/xuzhen/miniconda3/envs/flame/lib/python3.8/site-packages/largesteps/solvers.py", line 130, in __init__
        self.solver_1 = prepare(self.L, False, False, True)
      File "/home/xuzhen/miniconda3/envs/flame/lib/python3.8/site-packages/largesteps/solvers.py", line 68, in prepare
        _cusparse.scsrsm2_analysis(
      File "cupy_backends/cuda/libs/cusparse.pyx", line 2103, in cupy_backends.cuda.libs.cusparse.scsrsm2_analysis
      File "cupy_backends/cuda/libs/cusparse.pyx", line 2115, in cupy_backends.cuda.libs.cusparse.scsrsm2_analysis
      File "cupy_backends/cuda/libs/cusparse.pyx", line 1511, in cupy_backends.cuda.libs.cusparse.check_status
    cupy_backends.cuda.libs.cusparse.CuSparseError: CUSPARSE_STATUS_ALLOC_FAILED
    

    To reproduce, run this code example with this example mesh (extract armadillo.npz and place it where you run the code below):

    import torch
    import numpy as np
    from tqdm import tqdm
    
    from largesteps.parameterize import from_differential, to_differential
    from largesteps.geometry import compute_matrix
    from largesteps.optimize import AdamUniform
    
    armadillo = np.load('armadillo.npz')
    verts = torch.tensor(armadillo['v'], device='cuda')
    faces = torch.tensor(armadillo['f'], device='cuda')
    
    for i in tqdm(range(3000)):
        # assume there's different meshes w/ different topology
        M = compute_matrix(verts, faces, 10)
        u = to_differential(M, verts)
        u.requires_grad_()
        optim = AdamUniform([u], 3e-2)
        for j in range(5):
            v: torch.Tensor = from_differential(M, u, 'Cholesky')
            loss: torch.Tensor = (v.norm(dim=-1) - 1).mean()
            optim.zero_grad()
            loss.backward()
            optim.step()
    

    While running the code above, you should see the GPU memory continuously increase but the expected behavior is that it stays constant.

    For example, the result of nvidia-smi dmon -s m while running the code should be something like: image

    opened by dendenxu 2
  • How to deal with my datasets

    How to deal with my datasets

    Hi,

    Thank you for your excellent work, but I have a question. How should I handle my data so that it can be accepted by this framework? I only have meshes. I do not have the .blender file and the .xml file. And I have texture files of different formart.

    Thank you.

    opened by X1aoyueyue 1
  • Question about goal of project

    Question about goal of project

    I compiled and started the project, watches videos and papers but still can't understand the purpose of project. Is it reconstruction from images or this solutions solving one of the problems of area with reconstruction from images? In sources I can see source and destination model no images. Is this method showing how to get the same model like in target with simple in source but not from images? Is I understand correctly: The project giving target model -> render it from different positions and using this images for reconstruct the scene back? If the method using light of areas for reconstruct normals and mesh how far is it from using with photos from real life?

    opened by DAigory 1
  • Running blender_render.py

    Running blender_render.py

    First of all I'd like to thank you for making this phenomenal experience and make it available for testing. Running the nvdiffrast can be really straight forward and easy for rendering but I'm having some understanding problem with rendering the code inside the blender so please bear with me :)

    How do I run the rendering inside the blender? Is it by script editor? [I tried it but it gives me errors] Is it by running it as command ?

    I just need to understand the methodology of rendering that in blender since it's a utility and not included in the Tutorial.

    Thank you so much.

    opened by samgr55 1
  • Running The Dragon Example

    Running The Dragon Example

    Hi, Thanks for sharing your work! I tried to use the Tutorial notebook on the Dragon mesh but get really poor results. Can you share the parameters you used to make the model converge? thanks a lot

    opened by arielbenitah 1
  • eigen and cudatoolkit-dev missing

    eigen and cudatoolkit-dev missing

    Hi Baptiste, thanks for publishing the code:-) I found two requirements missing in the installation instructions:

    • apt install libeigen3-dev (required for building botsch-kobbelt)
    • conda install cudatoolkit-dev -c conda-forge (required by nvdiffrast)
    opened by wpalfi 1
  • Casting issue torch.nn.Parameter

    Casting issue torch.nn.Parameter

    Not sure if this should be solved here, in cholespy, or nanobind. The from_differential function throws an error if the second argument is a torch.nn.Parameter rather than a tensor. Parameter is directly derived from Tensor, so there's no reason the cast should fail.

    TypeError: solve(): incompatible function arguments. The following argument types are supported:
        1. solve(self, b: tensor[dtype=float32, order='C'], x: tensor[dtype=float32, order='C']) -> None
    
    Invoked with types: CholeskySolverF, Parameter, Tensor
    

    It's quite hard to workaround this "from the outside". E.g. doing from_differential(M, x.data) doesn't work because the gradient will be written to x.data.grad whereas the optimizer expects x.grad.

    opened by JHnvidia 0
  • Fix adamuniform update step when no grad

    Fix adamuniform update step when no grad

    Need to check whether there are gradients or not when updating parameters. Ref: https://github.com/pytorch/pytorch/blob/d05f07494a9a32c63f9218c0e703764a02033bb9/torch/optim/adam.py#L134

    opened by xk-huang 0
Releases(v0.2.1)
  • v0.2.1(Sep 5, 2022)

  • v0.2.0(Jun 3, 2022)

    • Use cholespy for the Cholesky solver, making the dependencies lighter and easier to install
    • Added an optimization to the rendering code

    :warning: These changes have an influence on the performance of different blocks of the experiments pipeline, so you may notice some timing discrepancies when running the experiments.

    Source code(tar.gz)
    Source code(zip)
  • v0.1.1(Dec 9, 2021)

    This repository contains the implementation of our research paper "Large Steps in Inverse Rendering of Geometry". It contains the parameterization code as a python package, as well as code to reproduce several figures from the paper.

    Source code(tar.gz)
    Source code(zip)
Owner
RGL: Realistic Graphics Lab
EPFL
RGL: Realistic Graphics Lab
Code for "Learning Graph Cellular Automata"

Learning Graph Cellular Automata This code implements the experiments from the NeurIPS 2021 paper: "Learning Graph Cellular Automata" Daniele Grattaro

Daniele Grattarola 37 Oct 26, 2022
Unsupervised Pre-training for Person Re-identification (LUPerson)

LUPerson Unsupervised Pre-training for Person Re-identification (LUPerson). The repository is for our CVPR2021 paper Unsupervised Pre-training for Per

143 Dec 24, 2022
Turning SymPy expressions into JAX functions

sympy2jax Turn SymPy expressions into parametrized, differentiable, vectorizable, JAX functions. All SymPy floats become trainable input parameters. S

Miles Cranmer 38 Dec 11, 2022
Receptive Field Block Net for Accurate and Fast Object Detection, ECCV 2018

Receptive Field Block Net for Accurate and Fast Object Detection By Songtao Liu, Di Huang, Yunhong Wang Updatas (2021/07/23): YOLOX is here!, stronger

Liu Songtao 1.4k Dec 21, 2022
An implementation of Deep Forest 2021.2.1.

Deep Forest (DF) 21 DF21 is an implementation of Deep Forest 2021.2.1. It is designed to have the following advantages: Powerful: Better accuracy than

LAMDA Group, Nanjing University 795 Jan 03, 2023
The pure and clear PyTorch Distributed Training Framework.

The pure and clear PyTorch Distributed Training Framework. Introduction Requirements and Usage Dependency Dataset Basic Usage Slurm Cluster Usage Base

WILL LEE 208 Dec 20, 2022
Code for unmixing audio signals in four different stems "drums, bass, vocals, others". The code is adapted from "Jukebox: A Generative Model for Music"

Status: Archive (code is provided as-is, no updates expected) Disclaimer This code is a based on "Jukebox: A Generative Model for Music" Paper We adju

Wadhah Zai El Amri 24 Dec 29, 2022
Download from Onlyfans.com.

OnlySave: Onlyfans downloader Getting Started: Download the setup executable from the latest release. Install and run. Only works on Windows currently

4 May 30, 2022
JupyterLite demo deployed to GitHub Pages 🚀

JupyterLite Demo JupyterLite deployed as a static site to GitHub Pages, for demo purposes. ✨ Try it in your browser ✨ ➡️ https://jupyterlite.github.io

JupyterLite 223 Jan 04, 2023
DeRF: Decomposed Radiance Fields

DeRF: Decomposed Radiance Fields Daniel Rebain, Wei Jiang, Soroosh Yazdani, Ke Li, Kwang Moo Yi, Andrea Tagliasacchi Links Paper Project Page Abstract

UBC Computer Vision Group 24 Dec 02, 2022
Kaggle: Cell Instance Segmentation

Kaggle: Cell Instance Segmentation The goal of this challenge is to detect cells in microscope images. with simple view on how many cels have been ann

Jirka Borovec 9 Aug 12, 2022
Convert Table data to approximate values with GUI

Table_Editor Convert Table data to approximate values with GUIs... usage - Import methods for extension Tables. Imported method supposed to have only

CLJ 1 Jan 10, 2022
This repo contains the official code and pre-trained models for the Dynamic Vision Transformer (DVT).

Dynamic-Vision-Transformer (Pytorch) This repo contains the official code and pre-trained models for the Dynamic Vision Transformer (DVT). Not All Ima

210 Dec 18, 2022
Pytorch implementation of paper "Learning Co-segmentation by Segment Swapping for Retrieval and Discovery"

SegSwap Pytorch implementation of paper "Learning Co-segmentation by Segment Swapping for Retrieval and Discovery" [PDF] [Project page] If our project

xshen 41 Dec 10, 2022
[NeurIPS2021] Code Release of Learning Transferable Perturbations

Learning Transferable Adversarial Perturbations This is an official release of the paper Learning Transferable Adversarial Perturbations. The code is

Krishna Kanth 17 Nov 11, 2022
Estimation of human density in a closed space using deep learning.

Siemens HOLLZOF challenge - Human Density Estimation Add project description here. Installing Dependencies: Install Python3 either system-wide, user-w

3 Aug 08, 2021
SciPy fixes and extensions

scipyx SciPy is large library used everywhere in scientific computing. That's why breaking backwards-compatibility comes as a significant cost and is

Nico Schlömer 16 Jul 17, 2022
Official PyTorch implementation of Segmenter: Transformer for Semantic Segmentation

Segmenter: Transformer for Semantic Segmentation Segmenter: Transformer for Semantic Segmentation by Robin Strudel*, Ricardo Garcia*, Ivan Laptev and

594 Jan 06, 2023
Codebase of deep learning models for inferring stability of mRNA molecules

Kaggle OpenVaccine Models Codebase of deep learning models for inferring stability of mRNA molecules, corresponding to the Kaggle Open Vaccine Challen

Eternagame 40 Dec 29, 2022
A Python training and inference implementation of Yolov5 helmet detection in Jetson Xavier nx and Jetson nano

yolov5-helmet-detection-python A Python implementation of Yolov5 to detect head or helmet in the wild in Jetson Xavier nx and Jetson nano. In Jetson X

12 Dec 05, 2022