mmpretrain/configs/beitv2
Yixiao Fang d80ec5a4b8
[Refactor] Refactor BEiT backbone and support v1/v2 inference. (#1144)
* refactor beit backbone

* use LinearClsHead

* fix mean and std value

* fix lint

* support inference if beit-v2

* update encoder layer and init

* update

* add ut

* add prepare_relative_position_bias_table function

* add cls_token

* fix lint

* add pos_embed check

* update metafile and readme

* update weights link

* update link of weights

* update metafile

* update

* update docstrings

* update according to review

* rename readme

* update docstring

* fix lint
2022-11-29 12:56:33 +08:00
..
README.md [Refactor] Refactor BEiT backbone and support v1/v2 inference. (#1144) 2022-11-29 12:56:33 +08:00
beitv2-base-p16_8xb64_in1k.py [Refactor] Refactor BEiT backbone and support v1/v2 inference. (#1144) 2022-11-29 12:56:33 +08:00
metafile.yml [Refactor] Refactor BEiT backbone and support v1/v2 inference. (#1144) 2022-11-29 12:56:33 +08:00

README.md

BEiT V2

BEiT v2: Masked Image Modeling with Vector-Quantized Visual Tokenizers

Abstract

Masked image modeling (MIM) has demonstrated impressive results in self-supervised representation learning by recovering corrupted image patches. However, most existing studies operate on low-level image pixels, which hinders the exploitation of high-level semantics for representation models. In this work, we propose to use a semantic-rich visual tokenizer as the reconstruction target for masked prediction, providing a systematic way to promote MIM from pixel-level to semantic-level. Specifically, we propose vector-quantized knowledge distillation to train the tokenizer, which discretizes a continuous semantic space to compact codes. We then pretrain vision Transformers by predicting the original visual tokens for the masked image patches. Furthermore, we introduce a patch aggregation strategy which associates discrete image patches to enhance global semantic representation. Experiments on image classification and semantic segmentation show that BEiT v2 outperforms all compared MIM methods. On ImageNet-1K (224 size), the base-size BEiT v2 achieves 85.5% top-1 accuracy for fine-tuning and 80.1% top-1 accuracy for linear probing. The large-size BEiT v2 obtains 87.3% top-1 accuracy for ImageNet-1K (224 size) fine-tuning, and 56.7% mIoU on ADE20K for semantic segmentation.

Results and models

ImageNet-1k

Model Pretrain Params(M) Flops(G) Top-1 (%) Top-5 (%) Config Download
BEiTv2-base* ImageNet-1k & ImageNet-21k 86.53 17.58 86.47 97.99 config model

Models with * are converted from the official repo. The config files of these models are only for inference.

For BEiTv2 self-supervised learning algorithm, welcome to MMSelfSup page to get more information.

Citation

@article{beitv2,
    title={{BEiT v2}: Masked Image Modeling with Vector-Quantized Visual Tokenizers},
    author={Zhiliang Peng and Li Dong and Hangbo Bao and Qixiang Ye and Furu Wei},
    year={2022},
    eprint={2208.06366},
    archivePrefix={arXiv},
    primaryClass={cs.CV}
}