mmselfsup/configs/selfsup/mocov3
Yuan Liu 399b5a0d6e
Bump version to v0.9.0 (#299)
* [Feature]: MAE pre-training with fp16 (#271)

* [Feature]: MAE pre-training with fp16

* [Fix]: Fix lint

* [Fix]: Fix SimMIM config link, and add SimMIM to model_zoo (#272)

* [Fix]: Fix link error

* [Fix]: Add SimMIM to model zoo

* [Fix]: Fix lint

* [Fix] fix 'no init_cfg' error for pre-trained model backbones (#256)

* [UT] add unit test for apis (#276)

* [UT] add unit test for apis

* ignore pytest log

* [Feature] Add extra dataloader settings in configs. (#264)

* [Feature] support to set validation samples per gpu independently

* set default to be cfg.data.samples_per_gpu

* modify the tools/test.py

* using 'train_dataloader', 'val_dataloader', 'test_dataloader' for specific settings

* test 'evaluation' branch

* [Fix]: Change imgs_per_gpu to samples_per_gpu MAE (#278)

* [Feature]: Add SimMIM 192 pt 224 ft (#280)

* [Feature]: Add SimMIM 192 pt 224 ft

* [Feature]: Add simmim 192 pt 224 ft to readme

* [Fix] fix key error bug when registering custom hooks (#273)

* [UT] remove pytorch1.5 test (#288)

* [Benchmark] rename linear probing config file names (#281)

* [Benchmark] rename linear probing config file names

* update config links

* Avoid GPU memory leak with prefetch dataloader (#277)

* [Feature] barlowtwins (#207)

* [Fix]: Fix mmcls upgrade bug (#235)

* [Feature]: Add multi machine dist_train (#232)

* [Feature]: Add multi machine dist_train

* [Fix]: Change bash to sh

* [Fix]: Fix missing sh suffix

* [Refactor]: Change bash to sh

* [Refactor] Add unit test (#234)

* [Refactor] add unit test

* update workflow

* update

* [Fix] fix lint

* update test

* refactor moco and densecl unit test

* fix lint

* add unit test

* update unit test

* remove modification

* [Feature]: Add MAE metafile (#238)

* [Feature]: Add MAE metafile

* [Fix]: Fix lint

* [Fix]: Change LARS to AdamW in the metafile of MAE

* Add barlowtwins

* Add unit test for barlowtwins

* Adjust training params

* add decorator to pass CI

* adjust params

* Add barlowtwins

* Add unit test for barlowtwins

* Adjust training params

* add decorator to pass CI

* adjust params

* add barlowtwins configs

* revise LatentCrossCorrelationHead

* modify ut to save memory

* add metafile

* add barlowtwins results to model zoo

* add barlow twins to homepage

* fix batch size bug

* add algorithm readme

* add type hints

* reorganize the model zoo

* remove one config

* recover the config

* add missing docstring

* revise barlowtwins

* reorganize coco and voc benchmark

* add barlowtwins to index.rst

* revise docstring

Co-authored-by: Yuan Liu <30762564+YuanLiuuuuuu@users.noreply.github.com>
Co-authored-by: Yixiao Fang <36138628+fangyixiao18@users.noreply.github.com>
Co-authored-by: fangyixiao18 <fangyx18@hotmail.com>

* [Fix] fix --local-rank (#290)

* [UT] reduce memory usage while runing unit test (#291)

* [Feature]: CAE Supported (#284)

* [Feature]: Add mc

* [Feature]: Add dataset of CAE

* [Feature]: Init version of CAE

* [Feature]: Add mc

* [Fix]: Change beta to (0.9, 0.999)

* [Fix]: New feature

* [Fix]: Decouple the qkv bias

* [Feature]: Decouple qkv bias in MultiheadAttention

* [Feature]: New mask generator

* [Fix]: Fix TransformEncoderLayer bug

* [Feature]: Add MAE CAE linear prob

* [Fix]: Fix config

* [Fix]: Delete redundant mc

* [Fix]: Add init value in mim cls vit

* [Fix]: Fix cae ft config

* [Fix]: Delete repeated init_values

* [Fix]: Change bs from 64 to 128 in CAE ft

* [Fix]: Add mc in cae pt

* [Fix]: Fix momemtum update bug

* [Fix]: Add no weight_decay for gamma

* [Feature]: Add mc for cae pt

* [Fix]: Delete mc

* [Fix]: Delete redundant files

* [Fix]: Fix lint

* [Feature]: Add docstring to algo, backbone, neck and head

* [Fix]: Fix lint

* [Fix]: network

* [Feature]: Add docstrings for network blocks

* [Feature]: Add docstring to ToTensor

* [Feature]: Add docstring to transoform

* [Fix]: Add type hint to BEiTMaskGenerator

* [Fix]: Fix lint

* [Fix]: Add copyright to dalle_e

* [Fix]: Fix BlockwiseMaskGenerator

* [Feature]: Add UT for CAE

* [Fix]: Fix dalle state_dict path not existed bug

* [Fix]: Delete file_client_args related code

* [Fix]: Remove redundant code

* [Refactor]: Add fp16 to the name of cae pre-train config

* [Refactor]: Use FFN from mmcv

* [Refactor]: Change network_blocks to trasformer_blocks

* [Fix]: Fix mask generator name bug

* [Fix]: cae pre-train config bug

* [Fix]: Fix docstring grammar

* [Fix]: Fix mc related code

* [Fix]: Add object parent to transform

* [Fix]: Delete unnecessary modification

* [Fix]: Change blockwisemask generator to simmim mask generator

* [Refactor]: Change cae mae pretrain vit to cae mae vit

* [Refactor]: Change lamb to lambd

* [Fix]: Remove blank line

* [Fix]: Fix lint

* [Fix]: Fix UT

* [Fix]: Delete modification to swin

* [Fix]: Fix lint

* [Feature]: Add README and metafile

* [Feature]: Update index.rst

* [Fix]: Update model_zoo

* [Fix]: Change MAE to CAE in algorithm

* [Fix]: Change SimMIMMaskGenerator to CAEMaskGenerator

* [Fix]: Fix model zoo

* [Fix]: Change to dalle_encoder

* [Feature]: Add download link for dalle

* [Fix]: Fix lint

* [Fix]: Fix UT

* [Fix]: Update metafile

* [Fix]: Change b to base

* [Feature]: Add dalle download link in warning

* [Fix] add arxiv link in readme

Co-authored-by: Jiahao Xie <52497952+Jiahao000@users.noreply.github.com>

* [Enhance] update SimCLR models and results (#295)

* [Enhance] update simclr models and results

* [Fix] revise comments to indicate settings

* Update version (#296)

* [Feature]: Update to 0.9.0

* [Feature]: Add version constrain for mmcls

* [Fix]: Fix bug

* [Fix]: Fix version bug

* [Feature]: Update version in install.md

* update changelog

* update readme

* [Fix] fix uppercase

* [Fix] fix uppercase

* [Fix] fix uppercase

* update version dependency

* add cae to readme

Co-authored-by: fangyixiao18 <fangyx18@hotmail.com>
Co-authored-by: Jiahao Xie <52497952+Jiahao000@users.noreply.github.com>

Co-authored-by: Yixiao Fang <36138628+fangyixiao18@users.noreply.github.com>
Co-authored-by: Ming Li <73068772+mitming@users.noreply.github.com>
Co-authored-by: xcnick <xcnick0412@gmail.com>
Co-authored-by: fangyixiao18 <fangyx18@hotmail.com>
Co-authored-by: Jiahao Xie <52497952+Jiahao000@users.noreply.github.com>
2022-04-29 20:01:30 +08:00
..
README.md Bump version to v0.9.0 (#299) 2022-04-29 20:01:30 +08:00
metafile.yml Bump version to v0.7.0 (#229) 2022-03-04 13:43:49 +08:00
mocov3_vit-small-p16_32xb128-fp16-coslr-300e_in1k-224.py [Refactor] Deprecate imgs_per_gpu and use samples_per_gpu (#204) 2022-02-09 17:45:41 +08:00

README.md

MoCo v3

An Empirical Study of Training Self-Supervised Vision Transformers

Abstract

This paper does not describe a novel method. Instead, it studies a straightforward, incremental, yet must-know baseline given the recent progress in computer vision: self-supervised learning for Vision Transformers (ViT). While the training recipes for standard convolutional networks have been highly mature and robust, the recipes for ViT are yet to be built, especially in the self-supervised scenarios where training becomes more challenging. In this work, we go back to basics and investigate the effects of several fundamental components for training self-supervised ViT. We observe that instability is a major issue that degrades accuracy, and it can be hidden by apparently good results. We reveal that these results are indeed partial failure, and they can be improved when training is made more stable. We benchmark ViT results in MoCo v3 and several other self-supervised frameworks, with ablations in various aspects. We discuss the currently positive evidence as well as challenges and open questions. We hope that this work will provide useful data points and experience for future research.

Results and Models

Back to model_zoo.md to download models.

In this page, we provide benchmarks as much as possible to evaluate our pre-trained models. If not mentioned, all models are pre-trained on ImageNet-1k dataset.

Classification

The classification benchmarks includes 4 downstream task datasets, VOC, ImageNet, iNaturalist2018 and Places205. If not specified, the results are Top-1 (%).

ImageNet Linear Evaluation

The Linear Evaluation result is obtained by training a linear head upon the pre-trained backbone. Please refer to vit-small-p16_8xb128-coslr-90e_in1k for details of config.

Self-Supervised Config Linear Evaluation
vit-small-p16_linear-32xb128-fp16-coslr-300e_in1k-224 73.19

Citation

@InProceedings{Chen_2021_ICCV,
    title     = {An Empirical Study of Training Self-Supervised Vision Transformers},
    author    = {Chen, Xinlei and Xie, Saining and He, Kaiming},
    booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
    year      = {2021}
}