[ECCV'20] Convolutional Occupancy Networks

Overview

Convolutional Occupancy Networks

Paper | Supplementary | Video | Teaser Video | Project Page | Blog Post

This repository contains the implementation of the paper:

Convolutional Occupancy Networks
Songyou Peng, Michael Niemeyer, Lars Mescheder, Marc Pollefeys and Andreas Geiger
ECCV 2020 (spotlight)

If you find our code or paper useful, please consider citing

@inproceedings{Peng2020ECCV,
 author =  {Songyou Peng, Michael Niemeyer, Lars Mescheder, Marc Pollefeys, Andreas Geiger},
 title = {Convolutional Occupancy Networks},
 booktitle = {European Conference on Computer Vision (ECCV)},
 year = {2020}}

Contact Songyou Peng for questions, comments and reporting bugs.

Installation

First you have to make sure that you have all dependencies in place. The simplest way to do so, is to use anaconda.

You can create an anaconda environment called conv_onet using

conda env create -f environment.yaml
conda activate conv_onet

Note: you might need to install torch-scatter mannually following the official instruction:

pip install torch-scatter==2.0.4 -f https://pytorch-geometric.com/whl/torch-1.4.0+cu101.html

Next, compile the extension modules. You can do this via

python setup.py build_ext --inplace

Demo

First, run the script to get the demo data:

bash scripts/download_demo_data.sh

Reconstruct Large-Scale Matterport3D Scene

You can now quickly test our code on the real-world scene shown in the teaser. To this end, simply run:

python generate.py configs/pointcloud_crop/demo_matterport.yaml

This script should create a folder out/demo_matterport/generation where the output meshes and input point cloud are stored.

Note: This experiment corresponds to our fully convolutional model, which we train only on the small crops from our synthetic room dataset. This model can be directly applied to large-scale real-world scenes with real units and generate meshes in a sliding-window manner, as shown in the teaser. More details can be found in section 6 of our supplementary material. For training, you can use the script pointcloud_crop/room_grid64.yaml.

Reconstruct Synthetic Indoor Scene

You can also test on our synthetic room dataset by running:

python generate.py configs/pointcloud/demo_syn_room.yaml

Dataset

To evaluate a pretrained model or train a new model from scratch, you have to obtain the respective dataset. In this paper, we consider 4 different datasets:

ShapeNet

You can download the dataset (73.4 GB) by running the script from Occupancy Networks. After, you should have the dataset in data/ShapeNet folder.

Synthetic Indoor Scene Dataset

For scene-level reconstruction, we create a synthetic dataset of 5000 scenes with multiple objects from ShapeNet (chair, sofa, lamp, cabinet, table). There are also ground planes and randomly sampled walls.

You can download our preprocessed data (144 GB) using

bash scripts/download_data.sh

This script should download and unpack the data automatically into the data/synthetic_room_dataset folder.
Note: We also provide point-wise semantic labels in the dataset, which might be useful.

Alternatively, you can also preprocess the dataset yourself. To this end, you can:

  • download the ShapeNet dataset as described above.
  • check scripts/dataset_synthetic_room/build_dataset.py, modify the path and run the code.

Matterport3D

Download Matterport3D dataset from the official website. And then, use scripts/dataset_matterport/build_dataset.py to preprocess one of your favorite scenes. Put the processed data into data/Matterport3D_processed folder.

ScanNet

Download ScanNet v2 data from the official ScanNet website. Then, you can preprocess data with: scripts/dataset_scannet/build_dataset.py and put into data/ScanNet folder.
Note: Currently, the preprocess script normalizes ScanNet data to a unit cube for the comparison shown in the paper, but you can easily adapt the code to produce data with real-world metric. You can then use our fully convolutional model to run evaluation in a sliding-window manner.

Usage

When you have installed all binary dependencies and obtained the preprocessed data, you are ready to run our pre-trained models and train new models from scratch.

Mesh Generation

To generate meshes using a trained model, use

python generate.py CONFIG.yaml

where you replace CONFIG.yaml with the correct config file.

Use a pre-trained model
The easiest way is to use a pre-trained model. You can do this by using one of the config files under the pretrained folders.

For example, for 3D reconstruction from noisy point cloud with our 3-plane model on the synthetic room dataset, you can simply run:

python generate.py configs/pointcloud/pretrained/room_3plane.yaml

The script will automatically download the pretrained model and run the generation. You can find the outputs in the out/.../generation_pretrained folders

Note that the config files are only for generation, not for training new models: when these configs are used for training, the model will be trained from scratch, but during inference our code will still use the pretrained model.

We provide the following pretrained models:

pointcloud/shapenet_1plane.pt
pointcloud/shapenet_3plane.pt
pointcloud/shapenet_grid32.pt
pointcloud/shapenet_3plane_partial.pt
pointcloud/shapenet_pointconv.pt
pointcloud/room_1plane.pt
pointcloud/room_3plane.pt
pointcloud/room_grid32.pt
pointcloud/room_grid64.pt
pointcloud/room_combine.pt
pointcloud/room_pointconv.pt
pointcloud_crop/room_grid64.pt
voxel/voxel_shapenet_1plane.pt
voxel/voxel_shapenet_3plane.pt
voxel/voxel_shapenet_grid32.pt

Evaluation

For evaluation of the models, we provide the script eval_meshes.py. You can run it using:

python eval_meshes.py CONFIG.yaml

The script takes the meshes generated in the previous step and evaluates them using a standardized protocol. The output will be written to .pkl/.csv files in the corresponding generation folder which can be processed using pandas.

Note: We follow previous works to use "use 1/10 times the maximal edge length of the current object’s bounding box as unit 1" (see Section 4 - Metrics). In practice, this means that we multiply the Chamfer-L1 by a factor of 10 for reporting the numbers in the paper.

Training

Finally, to train a new network from scratch, run:

python train.py CONFIG.yaml

For available training options, please take a look at configs/default.yaml.

Further Information

Please also check out the following concurrent works that either tackle similar problems or share similar ideas:

Video lie detector using xgboost - A video lie detector using OpenFace and xgboost

video_lie_detector_using_xgboost a video lie detector using OpenFace and xgboost

2 Jan 11, 2022
Annealed Flow Transport Monte Carlo

Annealed Flow Transport Monte Carlo Open source implementation accompanying ICML 2021 paper by Michael Arbel*, Alexander G. D. G. Matthews* and Arnaud

DeepMind 30 Nov 21, 2022
Official implementation of the RAVE model: a Realtime Audio Variational autoEncoder

Official implementation of the RAVE model: a Realtime Audio Variational autoEncoder

Antoine Caillon 589 Jan 02, 2023
Scheduling BilinearRewards

Scheduling_BilinearRewards Requirement Python 3 =3.5 Structure main.py This file includes the main function. For getting the results in Figure 1, ple

junghun.kim 0 Nov 25, 2021
Tensorflow implementation and notebooks for Implicit Maximum Likelihood Estimation

tf-imle Tensorflow 2 and PyTorch implementation and Jupyter notebooks for Implicit Maximum Likelihood Estimation (I-MLE) proposed in the NeurIPS 2021

NEC Laboratories Europe 69 Dec 13, 2022
Equivariant layers for RC-complement symmetry in DNA sequence data

Equi-RC Equivariant layers for RC-complement symmetry in DNA sequence data This is a repository that implements the layers as described in "Reverse-Co

7 May 19, 2022
Simple (but Strong) Baselines for POMDPs

Recurrent Model-Free RL is a Strong Baseline for Many POMDPs Welcome to the POMDP world! This repo provides some simple baselines for POMDPs, specific

Tianwei V. Ni 172 Dec 29, 2022
Solver for Large-Scale Rank-One Semidefinite Relaxations

STRIDE: spectrahedral proximal gradient descent along vertices A Solver for Large-Scale Rank-One Semidefinite Relaxations About STRIDE is designed for

48 Dec 20, 2022
Shape-aware Semi-supervised 3D Semantic Segmentation for Medical Images

SASSnet Code for paper: Shape-aware Semi-supervised 3D Semantic Segmentation for Medical Images(MICCAI 2020) Our code is origin from UA-MT You can fin

klein 125 Jan 03, 2023
A chemical analysis of lipophilicities & molecule drawings including ML

A chemical analysis of lipophilicity & molecule drawings including a bit of ML analysis. This is a simple project that includes two Jupyter files (one

Aurimas A. Nausėdas 7 Nov 22, 2022
Wordle-solver - Wordle answer generation program in python

🟨 Wordle Solver 🟩 Wordle answer generation program in python ✔️ Requirements U

Dahyun Kang 4 May 28, 2022
Selfplay In MultiPlayer Environments

This project allows you to train AI agents on custom-built multiplayer environments, through self-play reinforcement learning.

200 Jan 08, 2023
Google Brain - Ventilator Pressure Prediction

Google Brain - Ventilator Pressure Prediction https://www.kaggle.com/c/ventilator-pressure-prediction The ventilator data used in this competition was

Samuele Cucchi 1 Feb 11, 2022
Semantic Segmentation for Aerial Imagery using Convolutional Neural Network

This repo has been deprecated because whole things are re-implemented by using Chainer and I did refactoring for many codes. So please check this newe

Shunta Saito 27 Sep 23, 2022
Sparse Progressive Distillation: Resolving Overfitting under Pretrain-and-Finetune Paradigm

Sparse Progressive Distillation: Resolving Overfitting under Pretrain-and-Finetu

3 Dec 05, 2022
Implementation of "Meta-rPPG: Remote Heart Rate Estimation Using a Transductive Meta-Learner"

Meta-rPPG: Remote Heart Rate Estimation Using a Transductive Meta-Learner This repository is the official implementation of Meta-rPPG: Remote Heart Ra

Eugene Lee 137 Dec 13, 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
MERLOT: Multimodal Neural Script Knowledge Models

merlot MERLOT: Multimodal Neural Script Knowledge Models MERLOT is a model for learning what we are calling "neural script knowledge" -- representatio

Rowan Zellers 190 Dec 22, 2022
Pytorch Implementation of Residual Vision Transformers(ResViT)

ResViT Official Pytorch Implementation of Residual Vision Transformers(ResViT) which is described in the following paper: Onat Dalmaz and Mahmut Yurt

ICON Lab 41 Dec 08, 2022
Real-Time Seizure Detection using EEG: A Comprehensive Comparison of Recent Approaches under a Realistic Setting

Real-Time Seizure Detection using Electroencephalogram (EEG) This is the repository for "Real-Time Seizure Detection using EEG: A Comprehensive Compar

AITRICS 30 Dec 17, 2022