The 7th edition of NTIRE: New Trends in Image Restoration and Enhancement workshop will be held on June 2022 in conjunction with CVPR 2022.

Overview

NTIRE 2022 - Image Inpainting Challenge

Important dates

  • 2022.02.01: Release of train data (input and output images) and validation data (only input)
  • 2022.02.01: Validation server online
  • 2022.03.13: Final test data release (only input images)
  • 2022.03.20: Test output results submission deadline
  • 2022.03.20: Fact sheets and code/executable submission deadline
  • 2022.03.22: Preliminary test results release to the participants
  • 2022.04.01: Paper submission deadline for entries from the challenge
  • 2022.06.19: Workshop day

Description

The 7th edition of NTIRE: New Trends in Image Restoration and Enhancement workshop will be held on June 2022 in conjunction with CVPR 2022.

Image manipulation is a key computer vision task, aiming at the restoration of degraded image content, the filling in of missing information, or the needed transformation and/or manipulation to achieve the desired target (with respect to perceptual quality, contents, or performance of apps working on such images). Recent years have witnessed an increased interest from the vision and graphics communities in these fundamental topics of research. Not only has there been a constantly growing flow of related papers, but also substantial progress has been achieved.

Recently, there has been a substantial increase in the number of published papers that directly or indirectly address Image Inpainting. Due to a lack of a standardized framework, it is difficult for a new method to perform a comprehensive and fair comparison with respect to existing solutions. This workshop aims to provide an overview of the new trends and advances in those areas. Moreover, it will offer an opportunity for academic and industrial attendees to interact and explore collaborations.

Jointly with the NTIRE workshop, we have an NTIRE challenge on Image Inpainting, that is, the task of predicting the values of missing pixels in an image so that the completed result looks realistic and coherent. This challenge has 3 main objectives:

  1. Direct comparison of recent state-of-the-art Image Inpainting solutions, which will be considered as baselines. See baselines.
  2. To perform a comprehensive analysis on the different types of masks, for instance, strokes, half completion, nearest neighbor upsampling, etc. Thus, highlighting the pros and cons of each method for each type of mask. See Type of masks.
  3. To set a public benchmark on 4 different datasets (FFHQ, Places, ImageNet, and WikiArt) for direct and easy comparison. See data.

This challenge has 2 tracks:

Main Goal

The aim is to obtain a mask agnostic network design/solution capable of producing high-quality results with the best perceptual quality with respect to the ground truth.

Type of Masks

In addition to the typical strokes, with this challenge, we aim at more generalizable solutions.

Thick Strokes Medium Strokes Thin Strokes
Every_N_Lines Completion Expand
Nearest_Neighbor

Data

Following a common practice in Image Inpainting methods, we use three popular datasets for our challenge: FFHQ, Places, and ImageNet. Additionally, to explore a new benchmark, we also use the WikiArt dataset to tackle inpainting towards art creation. See the data for more info about downloading the datasets.

Competition

The top-ranked participants will be awarded and invited to follow the CVPR submission guide for workshops to describe their solutions and to submit to the associated NTIRE workshop at CVPR 2022.

Evaluation

See Evaluation.

Provided Resources

  • Scripts: With the dataset, the organizers will provide scripts to facilitate the reproducibility of the images and performance evaluation results after the validation server is online. More information is provided on the data page.
  • Contact: You can use the forum on the data description page (Track1 and Track 2 - highly recommended!) or directly contact the challenge organizers by email (me [at] afromero.co, a.castillo13 [at] uniandes.edu.co, and Radu.Timofte [at] vision.ee.ethz.ch) if you have doubts or any question.

Issues and questions:

In case of any questions about the challenge or the toolkit, feel free to open an issue on Github.

Organizers

Terms and conditions

The terms and conditions for participating in the challenge are provided here

Shout-outs

Thanks to everyone who makes their code and models available. In particular,

Owner
Andrés Romero
Postdoctoral Researcher
Andrés Romero
Deep motion generator collections

GenMotion GenMotion (/gen’motion/) is a Python library for making skeletal animations. It enables easy dataset loading and experiment sharing for synt

23 May 24, 2022
NP DRAW paper released code

NP-DRAW: A Non-Parametric Structured Latent Variable Model for Image Generation This repo contains the official implementation for the NP-DRAW paper.

ZENG Xiaohui 22 Mar 13, 2022
Implementation of PyTorch-based multi-task pre-trained models

mtdp Library containing implementation related to the research paper "Multi-task pre-training of deep neural networks for digital pathology" (Mormont

Romain Mormont 27 Oct 14, 2022
Dieser Scanner findet Websites, die nicht direkt in Suchmaschinen auftauchen, aber trotzdem erreichbar sind.

Deep Web Scanner Dieses Script findet Websites, die per IPv4-Adresse erreichbar sind und speichert deren Metadaten. Die Ausgabe im Terminal wird nach

Alex K. 30 Nov 18, 2022
Simple transformer model for CIFAR10

CIFAR-Transformer Simple transformer model for CIFAR10. Reference: https://www.tensorflow.org/text/tutorials/transformer https://github.com/huggingfac

9 Nov 07, 2022
Repository of the paper Compressing Sensor Data for Remote Assistance of Autonomous Vehicles using Deep Generative Models at ML4AD @ NeurIPS 2021.

Compressing Sensor Data for Remote Assistance of Autonomous Vehicles using Deep Generative Models Code and supplementary materials Repository of the p

Daniel Bogdoll 4 Jul 13, 2022
competitions-v2

Codabench (formerly Codalab Competitions v2) Installation $ cp .env_sample .env $ docker-compose up -d $ docker-compose exec django ./manage.py migrat

CodaLab 21 Dec 02, 2022
Generative Handwriting using LSTM Mixture Density Network with TensorFlow

Generative Handwriting Demo using TensorFlow An attempt to implement the random handwriting generation portion of Alex Graves' paper. See my blog post

hardmaru 686 Nov 24, 2022
Mouse Brain in the Model Zoo

Deep Neural Mouse Brain Modeling This is the repository for the ongoing deep neural mouse modeling project, an attempt to characterize the representat

Colin Conwell 15 Aug 22, 2022
A FAIR dataset of TCV experimental results for validating edge/divertor turbulence models.

TCV-X21 validation for divertor turbulence simulations Quick links Intro Welcome to TCV-X21. We're glad you've found us! This repository is designed t

0 Dec 18, 2021
Pytorch Geometric Tutorials

Pytorch Geometric Tutorials

Antonio Longa 648 Jan 08, 2023
LRBoost is a scikit-learn compatible approach to performing linear residual based stacking/boosting.

LRBoost is a sckit-learn compatible package for linear residual boosting. LRBoost combines a linear estimator and a non-linear estimator to leverage t

Andrew Patton 5 Nov 23, 2022
[CVPR 2022] Pytorch implementation of "Templates for 3D Object Pose Estimation Revisited: Generalization to New objects and Robustness to Occlusions" paper

template-pose Pytorch implementation of "Templates for 3D Object Pose Estimation Revisited: Generalization to New objects and Robustness to Occlusions

Van Nguyen Nguyen 92 Dec 28, 2022
GPT-Code-Clippy (GPT-CC) is an open source version of GitHub Copilot

GPT-Code-Clippy (GPT-CC) is an open source version of GitHub Copilot, a language model -- based on GPT-3, called GPT-Codex -- that is fine-tuned on publicly available code from GitHub.

2.3k Jan 09, 2023
A fast Evolution Strategy implementation in Python

Evostra: Evolution Strategy for Python Evolution Strategy (ES) is an optimization technique based on ideas of adaptation and evolution. You can learn

Mika 251 Dec 08, 2022
An implementation for Neural Architecture Search with Random Labels (CVPR 2021 poster) on Pytorch.

Neural Architecture Search with Random Labels(RLNAS) Introduction This project provides an implementation for Neural Architecture Search with Random L

18 Nov 08, 2022
PyTorch implementation of Advantage Actor Critic (A2C), Proximal Policy Optimization (PPO), Scalable trust-region method for deep reinforcement learning using Kronecker-factored approximation (ACKTR) and Generative Adversarial Imitation Learning (GAIL).

PyTorch implementation of Advantage Actor Critic (A2C), Proximal Policy Optimization (PPO), Scalable trust-region method for deep reinforcement learning using Kronecker-factored approximation (ACKTR)

Ilya Kostrikov 3k Dec 31, 2022
Pytorch implementation for reproducing StackGAN_v2 results in the paper StackGAN++: Realistic Image Synthesis with Stacked Generative Adversarial Networks

StackGAN-v2 StackGAN-v1: Tensorflow implementation StackGAN-v1: Pytorch implementation Inception score evaluation Pytorch implementation for reproduci

Han Zhang 809 Dec 16, 2022
Diverse Image Captioning with Context-Object Split Latent Spaces (NeurIPS 2020)

Diverse Image Captioning with Context-Object Split Latent Spaces This repository is the PyTorch implementation of the paper: Diverse Image Captioning

Visual Inference Lab @TU Darmstadt 34 Nov 21, 2022
A Comprehensive Empirical Study of Vision-Language Pre-trained Model for Supervised Cross-Modal Retrieval

CLIP4CMR A Comprehensive Empirical Study of Vision-Language Pre-trained Model for Supervised Cross-Modal Retrieval The original data and pre-calculate

24 Dec 26, 2022