Pytorch implementation of paper "Learning Co-segmentation by Segment Swapping for Retrieval and Discovery"

Overview

SegSwap

Pytorch implementation of paper "Learning Co-segmentation by Segment Swapping for Retrieval and Discovery"

[PDF] [Project page]

teaser

teaser

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

@article{shen2021learning,
  title={Learning Co-segmentation by Segment Swapping for Retrieval and Discovery},
  author={Shen, Xi and Efros, Alexei A and Joulin, Armand and Aubry, Mathieu},
  journal={arXiv},
  year={2021}

Table of Content

1. Installation

1.1. Dependencies

Our model can be learnt on a a single GPU Tesla-V100-16GB. The code has been tested in Pytorch 1.7.1 + cuda 10.2

Other dependencies can be installed via (tqdm, kornia, opencv-python, scipy) :

bash requirement.sh

1.2. Pre-trained MocoV2-resnet50 + cross-transformer (~300M)

Quick download :

cd model/pretrained
bash download_model.sh

2. Training Data Generation

2.1. Download COCO (~20G)

This command will download coco2017 training set + annotations (~20G).

cd data/COCO2017/download_coco.sh
bash download_coco.sh

2.2. Image Pairs with One Repeated Object

2.2.1 Generating 100k pairs (~18G)

This command will generate 100k image pairs with one repeated object.

cd data/
python generate_1obj.py --out-dir pairs_1obj_100k 

2.2.1 Examples of image pairs

Source Blended Obj + Background Stylised Source Stylised Background

2.2.2 Visualizing correspondences and masks of the generated pairs

This command will generate 10 pairs and visualize correspondences and masks of the pairs.

cd data/
bash vis_pair.sh

These pairs can be illustrated via vis10_1obj/vis.html

2.3. Image Pairs with Two Repeated Object

2.3.1 Generating 100k pairs (~18G)

This command will generate 100k image pairs with one repeated object.

cd data/
python generate_2obj.py --out-dir pairs_2obj_100k 

2.3.1 Examples of image pairs

Source Blended Obj + Background Stylised Source Stylised Background

2.3.2 Visualizing correspondences and masks of the generated pairs

This command will generate 10 pairs and visualize correspondences and masks of the pairs.

cd data/
bash vis_pair.sh

These pairs can be illustrated via vis10_2obj/vis.html

3. Evaluation

3.1 One-shot Art Detail Detection on Brueghel Dataset

3.1.1 Visual results: top-3 retrieved images

teaser

3.1.2 Data

Brueghel dataset has been uploaded in this repo

3.1.3 Quantitative results

The following command conduct evaluation on Brueghel with pre-trained cross-transformer:

cd evalBrueghel
python evalBrueghel.py --out-coarse out_brueghel.json --resume-pth ../model/hard_mining_neg5.pth --label-pth ../data/Brueghel/brueghelTest.json

Note that this command will save the features of Brueghel(~10G).

3.2 Place Recognition on Tokyo247 Dataset

3.2.1 Visual results: top-3 retrieved images

teaser

3.2.2 Data

Download Tokyo247 from its project page

Download the top-100 results used by patchVlad(~1G).

The data needs to be organised:

./SegSwap/data/Tokyo247
                    ├── query/
                        ├── 247query_subset_v2/
                    ├── database/
...

./SegSwap/evalTokyo
                    ├── top100_patchVlad.npy

3.2.3 Quantitative results

The following command conduct evaluation on Tokyo247 with pre-trained cross-transformer:

cd evalTokyo
python evalTokyo.py --qry-dir ../data/Tokyo247/query/247query_subset_v2 --db-dir ../data/Tokyo247/database --resume-pth ../model/hard_mining_neg5.pth

3.3 Place Recognition on Pitts30K Dataset

3.3.1 Visual results: top-3 retrieved images

teaser

3.3.2 Data

Download Pittsburgh dataset from its project page

Download the top-100 results used by patchVlad (~4G).

The data needs to be organised:

./SegSwap/data/Pitts
                ├── queries_real/
...

./SegSwap/evalPitts
                    ├── top100_patchVlad.npy

3.3.3 Quantitative results

The following command conduct evaluation on Pittsburgh30K with pre-trained cross-transformer:

cd evalPitts
python evalPitts.py --qry-dir ../data/Pitts/queries_real --db-dir ../data/Pitts --resume-pth ../model/hard_mining_neg5.pth

3.4 Discovery on Internet Dataset

3.4.1 Visual results

teaser

3.4.2 Data

Download Internet dataset from its project page

We provide a script to quickly download and preprocess the data (~400M):

cd data/Internet
bash download_int.sh

The data needs to be organised:

./SegSwap/data/Internet
                ├── Airplane100
                    ├── GroundTruth                
                ├── Horse100
                    ├── GroundTruth                
                ├── Car100
                    ├── GroundTruth                                

3.4.3 Quantitative results

The following commands conduct evaluation on Internet with pre-trained cross-transformer

cd evalInt
bash run_pair_480p.sh
bash run_best_only_cycle.sh

4. Training

Stage 1: standard training

Supposing that the generated pairs are saved in ./SegSwap/data/pairs_1obj_100k and ./SegSwap/data/pairs_2obj_100k.

Training command can be found in ./SegSwap/train/run.sh.

Note that this command should be able to be launched on a single GPU with 16G memory.

cd train
bash run.sh

Stage 2: hard mining

In train/run_hardmining.sh, replacing --resume-pth by the model trained in the 1st stage, than running:

cd train
bash run_hardmining.sh

5. Acknowledgement

We appreciate helps from :

Part of code is borrowed from our previous projects: ArtMiner and Watermark

6. ChangeLog

  • 21/10/21, model, evaluation + training released

7. License

This code is distributed under an MIT LICENSE.

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

Owner
xshen
Ph.D, Computer Vision, Deep Learning.
xshen
Colour detection is necessary to recognize objects, it is also used as a tool in various image editing and drawing apps.

Colour Detection On Image Colour detection is the process of detecting the name of any color. Simple isn’t it? Well, for humans this is an extremely e

Astitva Veer Garg 1 Jan 13, 2022
This is a Tensorflow implementation of Learning to See in the Dark in CVPR 2018

Learning-to-See-in-the-Dark This is a Tensorflow implementation of Learning to See in the Dark in CVPR 2018, by Chen Chen, Qifeng Chen, Jia Xu, and Vl

5.3k Jan 01, 2023
Data Consistency for Magnetic Resonance Imaging

Data Consistency for Magnetic Resonance Imaging Data Consistency (DC) is crucial for generalization in multi-modal MRI data and robustness in detectin

Dimitris Karkalousos 19 Dec 12, 2022
Official DGL implementation of "Rethinking High-order Graph Convolutional Networks"

SE Aggregation This is the implementation for Rethinking High-order Graph Convolutional Networks. Here we show the codes for citation networks as an e

Tianqi Zhang (张天启) 32 Jul 19, 2022
A Lightweight Hyperparameter Optimization Tool 🚀

Lightweight Hyperparameter Optimization 🚀 The mle-hyperopt package provides a simple and intuitive API for hyperparameter optimization of your Machin

136 Jan 08, 2023
Code for ICCV2021 paper PARE: Part Attention Regressor for 3D Human Body Estimation

PARE: Part Attention Regressor for 3D Human Body Estimation [ICCV 2021] PARE: Part Attention Regressor for 3D Human Body Estimation, Muhammed Kocabas,

Muhammed Kocabas 277 Jan 03, 2023
Fortuitous Forgetting in Connectionist Networks

Fortuitous Forgetting in Connectionist Networks Introduction This repository includes reference code for the paper Fortuitous Forgetting in Connection

Hattie Zhou 14 Nov 26, 2022
Super Resolution for images using deep learning.

Neural Enhance Example #1 — Old Station: view comparison in 24-bit HD, original photo CC-BY-SA @siv-athens. As seen on TV! What if you could increase

Alex J. Champandard 11.7k Dec 29, 2022
Session-based Recommendation, CoHHN, price preferences, interest preferences, Heterogeneous Hypergraph, Co-guided Learning, SIGIR2022

This is our implementation for the paper: Price DOES Matter! Modeling Price and Interest Preferences in Session-based Recommendation Xiaokun Zhang, Bo

Xiaokun Zhang 27 Dec 02, 2022
Cerberus Transformer: Joint Semantic, Affordance and Attribute Parsing

Cerberus Transformer: Joint Semantic, Affordance and Attribute Parsing Paper Introduction Multi-task indoor scene understanding is widely considered a

62 Dec 05, 2022
Implementation of the pix2pix model on satellite images

This repo shows how to implement and use the pix2pix GAN model for image to image translation. The model is demonstrated on satellite images, and the

3 May 24, 2022
Christmas face app for Decathlon xmas coding party!

Christmas Face Application Use this library to create the perfect picture for your christmas cards! Done by Hasib Zunair, Guillaume Brassard and Samue

Hasib Zunair 4 Dec 20, 2021
Scalable Multi-Agent Reinforcement Learning

Scalable Multi-Agent Reinforcement Learning 1. Featured algorithms: Value Function Factorization with Variable Agent Sub-Teams (VAST) [1] 2. Implement

3 Aug 02, 2022
Unsupervised clustering of high content screen samples

Microscopium Unsupervised clustering and dataset exploration for high content screens. See microscopium in action Public dataset BBBC021 from the Broa

60 Dec 05, 2022
VGGFace2-HQ - A high resolution face dataset for face editing purpose

The first open source high resolution dataset for face swapping!!! A high resolution version of VGGFace2 for academic face editing purpose

Naiyuan Liu 232 Dec 29, 2022
Vector Quantization, in Pytorch

Vector Quantization - Pytorch A vector quantization library originally transcribed from Deepmind's tensorflow implementation, made conveniently into a

Phil Wang 665 Jan 08, 2023
Official code repository for the EMNLP 2021 paper

Integrating Visuospatial, Linguistic and Commonsense Structure into Story Visualization PyTorch code for the EMNLP 2021 paper "Integrating Visuospatia

Adyasha Maharana 23 Dec 19, 2022
Code repo for "Cross-Scale Internal Graph Neural Network for Image Super-Resolution" (NeurIPS'20)

IGNN Code repo for "Cross-Scale Internal Graph Neural Network for Image Super-Resolution" [paper] [supp] Prepare datasets 1 Download training dataset

Shangchen Zhou 278 Jan 03, 2023
Pytorch implementations of popular off-policy multi-agent reinforcement learning algorithms, including QMix, VDN, MADDPG, and MATD3.

Off-Policy Multi-Agent Reinforcement Learning (MARL) Algorithms This repository contains implementations of various off-policy multi-agent reinforceme

183 Dec 28, 2022
Let Python optimize the best stop loss and take profits for your TradingView strategy.

TradingView Machine Learning TradeView is a free and open source Trading View bot written in Python. It is designed to support all major exchanges. It

Robert Roman 473 Jan 09, 2023