/OpenSelfSup

Self-Supervised Learning Toolbox and Benchmark

Primary LanguagePythonApache License 2.0Apache-2.0

OpenSelfSup

Introduction

The master branch works with PyTorch 1.1 or higher.

OpenSelfSup is an open source unsupervised representation learning toolbox based on PyTorch.

What does this repo do?

Below is the relations among Unsupervised Learning, Self-Supervised Learning and Representation Learning. This repo focuses on the shadow area, i.e., Unsupervised Representation Learning. Self-Supervised Representation Learning is the major branch of it. Since in many cases we do not distingush between Self-Supervised Representation Learning and Unsupervised Representation Learning strictly, we still name this repo as OpenSelfSup.

Major features

  • All methods in one repository
Support
ImageNet
Relative-Loc progress
Rotation-Pred
DeepCluster
ODC
NPID
MoCo
MoCo v2
SimCLR
PIRL progress
  • Flexibility & Extensibility

OpenSelfSup follows a similar code architecture of MMDetection while is even more flexible than MMDetection, since OpenSelfSup integrates various self-supervised tasks including classification, joint clustering and feature learning, contrastive learning, tasks with a memory bank, etc.

For existing methods in this repo, you only need to modify config files to adjust hyper-parameters. It is also simple to design your own methods, please refer to GETTING_STARTED.md.

  • Efficiency

    All methods support multi-machine multi-gpu distributed training.

  • Standardized Benchmarks

    We standardize the benchmarks including logistic regression, SVM / Low-shot SVM from linearly probed features, semi-supervised classification, and object detection. Below are the setting of these benchmarks.

Benchmarks Setting Remarks
ImageNet Linear Classification (Multi) goyal2019scaling Evaluate different layers.
ImageNet Linear Classification (Last) MoCo Evaluate the last layer after global pooling.
Places205 Linear Classification goyal2019scaling Evaluate different layers.
ImageNet Semi-Sup Classification
PASCAL VOC07 SVM goyal2019scaling Costs="1.0,10.0,100.0" to save evaluation time w/o change of results.
PASCAL VOC07 Low-shot SVM goyal2019scaling Costs="1.0,10.0,100.0" to save evaluation time w/o change of results.
PASCAL VOC07+12 Object Detection MoCo
COCO17 Object Detection MoCo

Change Log

Please refer to CHANGELOG.md for details and release history.

[2020-06-16] OpenSelfSup v0.1.0 is released.

Installation

Please refer to INSTALL.md for installation and dataset preparation.

Get Started

Please see GETTING_STARTED.md for the basic usage of OpenSelfSup.

Benchmark and Model Zoo

Please refer to MODEL_ZOO.md for for a comprehensive set of pre-trained models and benchmarks.

License

This project is released under the Apache 2.0 license.

Citation

If you use this toolbox or benchmark in your research, please cite this project.

@article{openselfsup,
  title   = {{OpenSelfSup}: Open MMLab Self-Supervised Learning Toolbox and Benchmark},
  author  = {Xiaohang Zhan, Jiahao Xie, Ziwei Liu, Dahua Lin, Chen Change Loy},
  howpublished = {\url{https://github.com/open-mmlab/openselfsup}},
  year = {2020}
}

Acknowledgement

  • This repo borrows the architecture design and part of the code from MMDetection.
  • The implementation of MoCo and the detection benchmark borrow the code from moco.
  • The SVM benchmark borrows the code from fair_self_supervision_benchmark.
  • openselfsup/third_party/clustering.py is borrowed from deepcluster.

Contact

This repo is currently maintained by Xiaohang Zhan (@XiaohangZhan).