Official PyTorch implementation and pre-trained models for paper iBOT: Image BERT Pre-Training with Online Tokenizer.
iBOT is a novel self-supervised pre-training framework that performs masked image modeling with self-distillation. iBOT pre-trained model shows local semantic features, which helps the model transfer well to downstream tasks both at a global scale and a local scale. For example, iBOT achieves strong performance on COCO object detection (51.2 box AP and 44.2 mask AP) and ADE20K semantic segmentation (50.0 mIoU) with vanilla ViT-B/16. iBOT can also extract semantic-meaningful local parts, like dog's ear πΆ.
- January 2022 - The paper is accepted by ICLR 2022.
- Update - ViT-L/16 with ImageNet-1K pre-training achieves 81.0% in linear probing accuracy. ViT-L/16 with ImageNet-22K pre-training achieves 87.8% in 512x fine-tuning accuracy.
- Update - Random masking with a relatively larger prediction ratio performs slighly better than block-wise masking. For example, ViT-B/16 achieves an 84.1% fine-tuning accuracy and a 51.5 box AP in object detection.
- December 2021 - Release the code and pre-trained models.
- November 2021 - Release the pre-print on arXiv.
See installation structions for details.
We provide run.sh
with which you can complete the pre-training + fine-tuning experiment cycle in an one-line command.
TYPE
is named by the rule of dataset_task. For example, pre-training on ImageNet-1K has a TYPE of imagenet_pretrain and linear probing evalution on ImageNet-1K has a TYPE of imagenet_linear. Different types of task can be appended in one command.JOB_NAME
is the customized job name to distinguish from different groups of experiments.ARCH
is the architecture of the pre-trained models.KEY
chooses which pre-trained model to be evaluated and can be set as either teacher (generally better) or student for one model.GPUS
is GPUs needed for each node, and will be clamped byMAX_GPUS
(default as 8).- Other additional arguments can directly appended after these required ones. For example,
--lr 0.001
.
For example, the following command will automatically evaluate the models on K-NN and linear probing benchmark after the pre-training with student
and teacher
model distributed across 2 nodes:
TOTAL_NODES=2 NODE_ID=0 ./run.sh imagenet_pretrain+imagenet_knn+imagenet_linear vit_small student,teacher 16 // the first node
TOTAL_NODES=2 NODE_ID=1 ./run.sh imagenet_pretrain+imagenet_knn+imagenet_linear vit_small student,teacher 16 // the second node
For a glimpse at the full documentation of iBOT pre-training, please run:
python main_ibot.py --help
To start the iBOT pre-training with Vision Transformer (ViT), simply run the following commands. JOB_NAME
is a customized argument to distinguish different experiments and this will automatically save checkpoints into the seperate folders.
./run.sh imagenet_pretrain $JOB_NAME vit_{small,base,large} teacher {16,24,64}
The exact arguments to reproduce the models presented in our paper can be found in the args
column of the pre-trained models. We also provide the logs for pre-training to help reproducibility.
For example, run iBOT with ViT-S/16 network on two nodes with 8 GPUs for 800 epochs with the following command. The resulting checkpoint should reach 75.2% on k-NN accuracy, 77.9% on linear probing accuracy, and 82.3% on fine-tuning accuracy.
./run.sh imagenet_pretrain $JOB_NAME vit_small teacher 16 \
--teacher_temp 0.07 \
--warmup_teacher_temp_epochs 30 \
--norm_last_layer false \
--epochs 800 \
--batch_size_per_gpu 64 \
--shared_head true \
--out_dim 8192 \
--local_crops_number 10 \
--global_crops_scale 0.25 1 \
--local_crops_scale 0.05 0.25 \
--pred_ratio 0 0.3 \
--pred_ratio_var 0 0.2
This code also works for training iBOT on Swin Transformer (Swin). In the paper, we only conduct experiments on Swin-T with different window sizes:
./run.sh imagenet_pretrain $JOB_NAME swin_tiny teacher {16,40} \
--patch_size 4 \
--window_size {7,14}
For example, run iBOT with Swin-T/14 network on five nodes with 8 GPUS for 300 epochs with the following command. The resulting checkpoint should reach 76.2% on k-NN accuracy, 79.3% on linear probing accuracy.
./run.sh imagenet_pretrain $JOB_NAME swin_tiny teacher 40 \
--teacher_temp 0.07 \
--warmup_teacher_temp_epochs 30 \
--norm_last_layer false \
--epochs 300 \
--batch_size_per_gpu 26 \
--shared_head true \
--out_dim 8192 \
--local_crops_number 10 \
--global_crops_scale 0.25 1 \
--local_crops_scale 0.05 0.25 \
--pred_ratio 0 0.3 \
--pred_ratio_var 0 0.2 \
--pred_start_epoch 50 \
--patch_size 4 \
--window_size 14
You can choose to download only the weights of the pre-trained backbone
used for downstream tasks, and the full ckpt
which contains backbone and projection head weights for both student and teacher networks. For the backbone
, s
denotes that the student network is selected while t
denotes that the teacher network is selected. PS
denotes prediction shape.
Arch. | Par. | PS | k-NN | Lin. | Fin. | download | |||||
---|---|---|---|---|---|---|---|---|---|---|---|
ViT-S/16 | 21M | Block | 75.2% | 77.9% | 82.3% | backbone (t) | full ckpt | args | logs | ||
Swin-T/7 | 28M | Block | 75.3% | 78.6% | \ | backbone (t) | full ckpt | args | logs | ||
Swin-T/14 | 28M | Block | 76.2% | 79.3% | \ | backbone (t) | full ckpt | args | logs | ||
ViT-B/16 | 85M | Block | 77.1% | 79.5% | 84.0% | backbone (t) | full ckpt | args | logs | ||
ViT-B/16 | 85M | Rand | 77.3% | 79.8% | 84.1% | backbone (t) | full ckpt | args | logs | ||
ViT-L/16 | 307M | Block | 78.0% | 81.0% | 84.8% | backbone (t) | full ckpt | args | logs | ||
ViT-L/16 | 307M | Rand | 77.7% | 81.3% | 85.0% | backbone (t) | full ckpt | args | logs |
We also provide the ViT-{B,L}/16 model pre-trained on ImageNet-22K dataset.
Arch. | Par. | PS | k-NN | Lin. | Fin. | download | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
256 | 384 | 512 | |||||||||||
ViT-B/16 | 85M | Block | 71.1% | 79.0% | 84.4% | \ | \ | backbone (s) | full ckpt | args | logs | ||
ViT-L/16 | 307M | Block | 72.9% | 82.3% | 86.6% | 87.5% | 87.8% | backbone (s) | full ckpt | args | logs |
To extract the backbone from the full checkpoint by yourself, please run the following command where KEY
being either student or teacher.
WEIGHT_FILE=$OUTPUT_DIR/checkpoint_$KEY.pth
python extract_backbone_weights.py \
--checkpoint_key $KEY \
$PRETRAINED \
$WEIGHT_FILE \
See Evaluating iBOT on Downstream Tasks for details.
See Analyzing iBOT's Properties for robustness test and visualizing self-attention map:
or extracting sparse correspondence pairs between two images:
We also provide a Colab page π you can play around with iBOT pre-trained models.
We extract top-k numbered local classes based on patch tokens with their corresponding patches and contexts by running the following command. We indentify very diverse behaviour like shared low-level textures and high-level semantics.
python3 -m torch.distributed.launch --nproc_per_node=8 \
--master_port=${MASTER_PORT:-29500} \
analysis/extract_pattern/extract_topk_cluster.py \
--pretrained_path $PRETRAINED \
--checkpoint {student,teacher} \
--type patch \
--topk 36 \
--patch_window 5 \
--show_pics 20 \
--arch vit_small \
--save_path memory_bank_patch.pth \
--data_path data/imagenet/val
The script also supports to extract the patern layout on the [CLS] token, which is actually doing clustering or unsupervised classification. This property is not induced by MIM objective since we also spot this feature on DINO.
python3 -m torch.distributed.launch --nproc_per_node=8 \
--master_port=${MASTER_PORT:-29500} \
analysis/extract_pattern/extract_topk_cluster.py \
--pretrained_path $PRETRAINED \
--checkpoint {student,teacher} \
--type cls \
--topk 36 \
--show_pics 20 \
--arch vit_small \
--save_path memory_bank_cls.pth \
--data_path data/imagenet/val
This repository is built using the DINO repository and the BEiT repository.
This repository is released under the Apache 2.0 license as found in the LICENSE file.
If you find this repository useful, please consider giving a star β and citation:
@article{zhou2021ibot,
title={iBOT: Image BERT Pre-Training with Online Tokenizer},
author={Zhou, Jinghao and Wei, Chen and Wang, Huiyu and Shen, Wei and Xie, Cihang and Yuille, Alan and Kong, Tao},
journal={International Conference on Learning Representations (ICLR)},
year={2022}
}