Code for generating a single image pretraining dataset

Overview

Single Image Pretraining of Visual Representations

As shown in the paper

A critical analysis of self-supervision, or what we can learn from a single image, Asano et al. ICLR 2020

Example images from our dataset

Why?

Self-supervised representation learning has made enormous strides in recent years. In this paper we show that a large part why self-supervised learning works are the augmentations. We show this by pretraining various SSL methods on a dataset generated solely from augmenting a single source image and find that various methods still pretrain quite well and even yield representations as strong as using the whole dataset for the early layers of networks.

Abstract

We look critically at popular self-supervision techniques for learning deep convolutional neural networks without manual labels. We show that three different and representative methods, BiGAN, RotNet and DeepCluster, can learn the first few layers of a convolutional network from a single image as well as using millions of images and manual labels, provided that strong data augmentation is used. However, for deeper layers the gap with manual supervision cannot be closed even if millions of unlabelled images are used for training. We conclude that: (1) the weights of the early layers of deep networks contain limited information about the statistics of natural images, that (2) such low-level statistics can be learned through self-supervision just as well as through strong supervision, and that (3) the low-level statistics can be captured via synthetic transformations instead of using a large image dataset.

Usage

Here we provide the code for generating a dataset from using just a single source image. Since the publication, I have slightly modified the dataset generation script to make it easier to use. Dependencies: torch, torchvision, joblib, PIL, numpy, any recent version should do.

Run like this:

python make_dataset_single.py --imgpath images/ameyoko.jpg --targetpath ./out/ameyoko_dataset

Here is the full description of the usage:

usage: make_dataset_single.py [-h] [--img_size IMG_SIZE]
                              [--batch_size BATCH_SIZE] [--num_imgs NUM_IMGS]
                              [--threads THREADS] [--vflip] [--deg DEG]
                              [--shear SHEAR] [--cropfirst]
                              [--initcrop INITCROP] [--scale SCALE SCALE]
                              [--randinterp] [--imgpath IMGPATH] [--debug]
                              [--targetpath TARGETPATH]

Single Image Pretraining, Asano et al. 2020

optional arguments:
  -h, --help            show this help message and exit
  --img_size IMG_SIZE
  --batch_size BATCH_SIZE
  --num_imgs NUM_IMGS   number of images to be generated
  --threads THREADS     how many CPU threads to use for generation
  --vflip               use vflip?
  --deg DEG             max rot angle
  --shear SHEAR         max shear angle
  --cropfirst           usage of initial crop to not focus too much on center
  --initcrop INITCROP   initial crop size relative to image
  --scale SCALE SCALE   data augmentation inverse scale
  --randinterp          For RR crops: use random interpolation method or just bicubic?
  --imgpath IMGPATH
  --debug
  --targetpath TARGETPATH

Reference

If you find this code/idea useful, please consider citing our paper:

@inproceedings{asano2020a,
title={A critical analysis of self-supervision, or what we can learn from a single image},
author={Asano, Yuki M. and Rupprecht, Christian and Vedaldi, Andrea},
booktitle={International Conference on Learning Representations (ICLR)},
year={2020},
}
Owner
Yuki M. Asano
I'm a PhD student in the Visual Geometry Group at the University of Oxford. I work with @chrirupp and @vedaldi.
Yuki M. Asano
Adversarial vulnerability of powerful near out-of-distribution detection

Adversarial vulnerability of powerful near out-of-distribution detection by Stanislav Fort In this repository we're collecting replications for the ke

Stanislav Fort 9 Aug 30, 2022
A really easy-to-use and powerful sudoku solver.

SodukuSolver This is a really useful sudoku solver with a Qt gui. USAGE Enter the numbers in and click "RUN"! If you don't want to wait, simply press

Ujhhgtg Teams 11 Jun 02, 2022
Using pytorch to implement unet network for liver image segmentation.

Using pytorch to implement unet network for liver image segmentation.

zxq 1 Dec 17, 2021
Official implementation of the ICLR 2021 paper

You Only Need Adversarial Supervision for Semantic Image Synthesis Official PyTorch implementation of the ICLR 2021 paper "You Only Need Adversarial S

Bosch Research 272 Dec 28, 2022
A list of awesome PyTorch scholarship articles, guides, blogs, courses and other resources.

Awesome PyTorch Scholarship Resources A collection of awesome PyTorch and Python learning resources. Contributions are always welcome! Course Informat

Arnas Gečas 302 Dec 03, 2022
Bottleneck Transformers for Visual Recognition

Bottleneck Transformers for Visual Recognition Experiments Model Params (M) Acc (%) ResNet50 baseline (ref) 23.5M 93.62 BoTNet-50 18.8M 95.11% BoTNet-

Myeongjun Kim 236 Jan 03, 2023
Count the MACs / FLOPs of your PyTorch model.

THOP: PyTorch-OpCounter How to install pip install thop (now continously intergrated on Github actions) OR pip install --upgrade git+https://github.co

Ligeng Zhu 3.9k Dec 29, 2022
Code for "Retrieving Black-box Optimal Images from External Databases" (WSDM 2022)

Retrieving Black-box Optimal Images from External Databases (WSDM 2022) We propose how a user retreives an optimal image from external databases of we

joisino 5 Apr 13, 2022
Explaining Deep Neural Networks - A comparison of different CAM methods based on an insect data set

Explaining Deep Neural Networks - A comparison of different CAM methods based on an insect data set This is the repository for the Deep Learning proje

Robert Krug 3 Feb 06, 2022
Pytorch codes for "Self-supervised Multi-view Stereo via Effective Co-Segmentation and Data-Augmentation"

Self-Supervised-MVS This repository is the official PyTorch implementation of our AAAI 2021 paper: "Self-supervised Multi-view Stereo via Effective Co

hongbin_xu 127 Jan 04, 2023
A scikit-learn-compatible module for estimating prediction intervals.

MAPIE - Model Agnostic Prediction Interval Estimator MAPIE allows you to easily estimate prediction intervals (or prediction sets) using your favourit

588 Jan 04, 2023
Code & Models for 3DETR - an End-to-end transformer model for 3D object detection

3DETR: An End-to-End Transformer Model for 3D Object Detection PyTorch implementation and models for 3DETR. 3DETR (3D DEtection TRansformer) is a simp

Facebook Research 487 Dec 31, 2022
Wikidated : An Evolving Knowledge Graph Dataset of Wikidata’s Revision History

Wikidated Wikidated 1.0 is a dataset of Wikidata’s full revision history, which encodes changes between Wikidata revisions as sets of deletions and ad

Lukas Schmelzeisen 11 Aug 16, 2022
Multi-Objective Loss Balancing for Physics-Informed Deep Learning

Multi-Objective Loss Balancing for Physics-Informed Deep Learning Code for ReLoBRaLo. Abstract Physics Informed Neural Networks (PINN) are algorithms

Rafael Bischof 16 Dec 12, 2022
Bayesian optimization in PyTorch

BoTorch is a library for Bayesian Optimization built on PyTorch. BoTorch is currently in beta and under active development! Why BoTorch ? BoTorch Prov

2.5k Dec 31, 2022
Facial expression detector

A tensorflow convolutional neural network model to detect facial expressions.

Carlos Tardón Rubio 5 Apr 20, 2022
Official implementation of "Not only Look, but also Listen: Learning Multimodal Violence Detection under Weak Supervision" ECCV2020

XDVioDet Official implementation of "Not only Look, but also Listen: Learning Multimodal Violence Detection under Weak Supervision" ECCV2020. The proj

peng 64 Dec 12, 2022
NExT-QA: Next Phase of Question-Answering to Explaining Temporal Actions (CVPR2021)

NExT-QA We reproduce some SOTA VideoQA methods to provide benchmark results for our NExT-QA dataset accepted to CVPR2021 (with 1 'Strong Accept' and 2

Junbin Xiao 50 Nov 24, 2022
My implementation of Image Inpainting - A deep learning Inpainting model

Image Inpainting What is Image Inpainting Image inpainting is a restorative process that allows for the fixing or removal of unwanted parts within ima

Joshua V Evans 1 Dec 12, 2021
DSL for matching Python ASTs

py-ast-rule-engine This library provides a DSL (domain-specific language) to match a pattern inside a Python AST (abstract syntax tree). The library i

1 Dec 18, 2021