Official Pytorch implementation of 'GOCor: Bringing Globally Optimized Correspondence Volumes into Your Neural Network' (NeurIPS 2020)

Related tags

Deep LearningGOCor
Overview

Official implementation of GOCor

This is the official implementation of our paper :

GOCor: Bringing Globally Optimized Correspondence Volumes into Your Neural Network.
Authors: Prune Truong *, Martin Danelljan *, Luc Van Gool, Radu Timofte

[Paper][Website][Video]

The feature correlation layer serves as a key neural network module in numerous computer vision problems that involve dense correspondences between image pairs. It predicts a correspondence volume by evaluating dense scalar products between feature vectors extracted from pairs of locations in two images. However, this point-to-point feature comparison is insufficient when disambiguating multiple similar regions in an image, severely affecting the performance of the end task. This work proposes GOCor, a fully differentiable dense matching module, acting as a direct replacement to the feature correlation layer. The correspondence volume generated by our module is the result of an internal optimization procedure that explicitly accounts for similar regions in the scene. Moreover, our approach is capable of effectively learning spatial matching priors to resolve further matching ambiguities.

alt text

Also check out our related work GLU-Net and the code here !


In this repo, we only provide code to test on image pairs as well as the pre-trained weights of the networks evaluated in GOCor paper. We will not release the training code. However, since GOCor module is a plug-in replacement for the feature correlation layer, it can be integrated into any architecture and trained using the original training code. We will release general training and evaluation code in a general dense correspondence repo, coming soon here.


For any questions, issues or recommendations, please contact Prune at [email protected]

Citation

If our project is helpful for your research, please consider citing :

@inproceedings{GOCor_Truong_2020,
      title = {{GOCor}: Bringing Globally Optimized Correspondence Volumes into Your Neural Network},
      author    = {Prune Truong 
                   and Martin Danelljan 
                   and Luc Van Gool 
                   and Radu Timofte},
      year = {2020},
      booktitle = {Advances in Neural Information Processing Systems 33: Annual Conference on Neural Information
                   Processing Systems 2020, {NeurIPS} 2020}
}

1. Installation

Note that the models were trained with torch 1.0. Torch versions up to 1.7 were tested for inference but NOT for training, so I cannot guarantee that the models train smoothly for higher torch versions.

  • Create and activate conda environment with Python 3.x
conda create -n GOCor_env python=3.7
conda activate GOCor_env
  • Install all dependencies (except for cupy, see below) by running the following command:
pip install -r requirements.txt

Note: CUDA is required to run the code. Indeed, the correlation layer is implemented in CUDA using CuPy, which is why CuPy is a required dependency. It can be installed using pip install cupy or alternatively using one of the provided binary packages as outlined in the CuPy repository. The code was developed using Python 3.7 & PyTorch 1.0 & CUDA 9.0, which is why I installed cupy for cuda90. For another CUDA version, change accordingly.

pip install cupy-cuda90==7.8.0 --no-cache-dir 

There are some issues with latest versions of cupy. So for all cuda, install cupy version 7.8.0. For example, on cuda10,

pip install cupy-cuda100==7.8.0 --no-cache-dir 
  • Download an archive with pre-trained models click and extract it to the project folder

2. Models

Pre-trained weights can be downloaded from here. We provide the pre-trained weights of:

  • GLU-Net trained on the static data, these are given for reference, they correspond to the weights 'GLUNet_DPED_CityScape_ADE.pth' that we provided here
  • GLU-Net-GOCor trained on the static data, corresponds to network in the GOCor paper
  • GLU-Net trained on the dynamic data
  • GLU-Net-GOCor trained on the dynamic data, corresponds to network in the GOCor paper
  • PWC-Net finetuned on chairs-things (by us), they are given for reference
  • PWC-Net-GOCor finetuned on chair-things, corresponds to network in the GOCor paper
  • PWC-Net further finetuned on sintel (by us), for reference
  • PWC-Net-GOCor further finetuned on sintel, corresponds to network in the GOCor paper

For reference, you can also use the weights from the original PWC-Net repo, where the networks are trained on chairs-things and further finetuned on sintel. As explained in the paper, for training our PWC-Net-based models, we initialize the network parameters with the pre-trained weights trained on chairs-things.

All networks are created in 'model_selection.py'

3. Test on your own images

You can test the networks on a pair of images using test_models.py and the provided trained model weights. You must first choose the model and pre-trained weights to use. The inputs are the paths to the query and reference images. The images are then passed to the network which outputs the corresponding flow field relating the reference to the query image. The query is then warped according to the estimated flow, and a figure is saved.

For this pair of images (provided to check that the code is working properly) and using GLU-Net-GOCor trained on the dynamic dataset, the output is:

python test_models.py --model GLUNet_GOCor --pre_trained_model dynamic --path_query_image images/eth3d_query.png --path_reference_image images/eth3d_reference.png --write_dir evaluation/

additional optional arguments:
--pre_trained_models_dir (default is pre_trained_models/)

alt text

For baseline GLU-Net, the output is instead:

python test_models.py --model GLUNet --pre_trained_model dynamic --path_query_image images/eth3d_query.png --path_reference_image images/eth3d_reference.png --write_dir evaluation/

alt text

And for PWC-Net-GOCor and baseline PWC-Net:

python test_models.py --model PWCNet_GOCor --pre_trained_model chairs_things --path_query_image images/kitti2015_query.png --path_reference_image images/kitti2015_reference.png --write_dir evaluation/

alt text

python test_models.py --model PWCNet --pre_trained_model chairs_things --path_query_image images/kitti2015_query.png --path_reference_image images/kitti2015_reference.png --write_dir evaluation/

alt text


Possible model choices are : GLUNet, GLUNet_GOCor, PWCNet, PWCNet_GOCor

Possible pre-trained model choices are: static, dynamic, chairs_things, chairs_things_ft_sintel

4. Acknowledgement

We borrow code from public projects, such as pytracking, GLU-Net, DGC-Net, PWC-Net, NC-Net, Flow-Net-Pytorch, RAFT ...

Owner
Prune Truong
PhD Student in Computer Vision Lab of ETH Zurich
Prune Truong
Code for MarioNette: Self-Supervised Sprite Learning, in NeurIPS 2021

MarioNette | Webpage | Paper | Video MarioNette: Self-Supervised Sprite Learning Dmitriy Smirnov, Michaël Gharbi, Matthew Fisher, Vitor Guizilini, Ale

Dima Smirnov 28 Nov 18, 2022
The official codes for the ICCV2021 Oral presentation "Rethinking Counting and Localization in Crowds: A Purely Point-Based Framework"

P2PNet (ICCV2021 Oral Presentation) This repository contains codes for the official implementation in PyTorch of P2PNet as described in Rethinking Cou

Tencent YouTu Research 208 Dec 26, 2022
Official code for ICCV2021 paper "M3D-VTON: A Monocular-to-3D Virtual Try-on Network"

M3D-VTON: A Monocular-to-3D Virtual Try-On Network Official code for ICCV2021 paper "M3D-VTON: A Monocular-to-3D Virtual Try-on Network" Paper | Suppl

109 Dec 29, 2022
This repository contains code for the paper "Decoupling Representation and Classifier for Long-Tailed Recognition", published at ICLR 2020

Classifier-Balancing This repository contains code for the paper: Decoupling Representation and Classifier for Long-Tailed Recognition Bingyi Kang, Sa

Facebook Research 820 Dec 26, 2022
IAUnet: Global Context-Aware Feature Learning for Person Re-Identification

IAUnet This repository contains the code for the paper: IAUnet: Global Context-Aware Feature Learning for Person Re-Identification Ruibing Hou, Bingpe

30 Jul 14, 2022
CompilerGym is a library of easy to use and performant reinforcement learning environments for compiler tasks

CompilerGym is a library of easy to use and performant reinforcement learning environments for compiler tasks

Facebook Research 721 Jan 03, 2023
StyleSpace Analysis: Disentangled Controls for StyleGAN Image Generation

StyleSpace Analysis: Disentangled Controls for StyleGAN Image Generation Demo video: CVPR 2021 Oral: Single Channel Manipulation: Localized or attribu

Zongze Wu 267 Dec 30, 2022
PiRapGenerator - Make anyone rap the digits of pi

PiRapGenerator Make anyone rap the digits of pi (sample files are of Ted Nivison

7 Oct 02, 2022
The Official Repository for "Generalized OOD Detection: A Survey"

Generalized Out-of-Distribution Detection: A Survey 1. Overview This repository is with our survey paper: Title: Generalized Out-of-Distribution Detec

Jingkang Yang 338 Jan 03, 2023
CTF challenges from redpwnCTF 2021

redpwnCTF 2021 Challenges This repository contains challenges from redpwnCTF 2021 in the rCDS format; challenge information is in the challenge.yaml f

redpwn 27 Dec 07, 2022
The code for Expectation-Maximization Attention Networks for Semantic Segmentation (ICCV'2019 Oral)

EMANet News The bug in loading the pretrained model is now fixed. I have updated the .pth. To use it, download it again. EMANet-101 gets 80.99 on the

Xia Li 李夏 663 Nov 30, 2022
Code for the paper "VisualBERT: A Simple and Performant Baseline for Vision and Language"

This repository contains code for the following two papers: VisualBERT: A Simple and Performant Baseline for Vision and Language (arxiv) with a short

Natural Language Processing @UCLA 463 Dec 09, 2022
Benchmarks for semi-supervised domain generalization.

Semi-Supervised Domain Generalization This code is the official implementation of the following paper: Semi-Supervised Domain Generalization with Stoc

Kaiyang 49 Dec 10, 2022
Train an RL agent to execute natural language instructions in a 3D Environment (PyTorch)

Gated-Attention Architectures for Task-Oriented Language Grounding This is a PyTorch implementation of the AAAI-18 paper: Gated-Attention Architecture

Devendra Chaplot 234 Nov 05, 2022
Implementation of Neural Distance Embeddings for Biological Sequences (NeuroSEED) in PyTorch

Neural Distance Embeddings for Biological Sequences Official implementation of Neural Distance Embeddings for Biological Sequences (NeuroSEED) in PyTo

Gabriele Corso 56 Dec 23, 2022
This is our ARTS test set, an enriched test set to probe Aspect Robustness of ABSA.

This is the repository for our 2020 paper "Tasty Burgers, Soggy Fries: Probing Aspect Robustness in Aspect-Based Sentiment Analysis". Data We provide

35 Nov 16, 2022
HiFi-GAN: High Fidelity Denoising and Dereverberation Based on Speech Deep Features in Adversarial Networks

HiFiGAN Denoiser This is a Unofficial Pytorch implementation of the paper HiFi-GAN: High Fidelity Denoising and Dereverberation Based on Speech Deep F

Rishikesh (ऋषिकेश) 134 Dec 27, 2022
🔥🔥High-Performance Face Recognition Library on PaddlePaddle & PyTorch🔥🔥

face.evoLVe: High-Performance Face Recognition Library based on PaddlePaddle & PyTorch Evolve to be more comprehensive, effective and efficient for fa

Zhao Jian 3.1k Jan 04, 2023
Code for the paper "Graph Attention Tracking". (CVPR2021)

SiamGAT 1. Environment setup This code has been tested on Ubuntu 16.04, Python 3.5, Pytorch 1.2.0, CUDA 9.0. Please install related libraries before r

122 Dec 24, 2022
Data for "Driving the Herd: Search Engines as Content Influencers" paper

herding_data Data for "Driving the Herd: Search Engines as Content Influencers" paper Dataset description The collection contains 2250 documents, 30 i

0 Aug 17, 2021