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Demystify Transformers & Convolutions in Modern Image Deep Networks

Xiaowei Hu^, Min Shi^, Weiyun Wang^, Sitong Wu^, Linjie Xing, Wenhai Wang, Xizhou Zhu, Lewei Lu, Jie Zhou, Xiaogang Wang, Yu Qiao, and Jifeng Dai*.

IEEE Transactions on Pattern Analysis and Machine Intelligence (IEEE TPAMI), 2024

This repository is a codebase for modern image deep networks, which is used in our paper "Demystify Transformers & Convolutions in Modern Image Deep Networks". In this paper, we develop a unified architecture for different spatial token mixing paradigms, and make various comparisons and analyses for these "spatial token mixers".

Figure1

The Purpose of This Project

Recently, a series of transformer-based vision backbones with novel spatial feature aggregation paradigms (spatial token mixer, STM) are proposed and report remarkable performance. However, network engineering techniques can also improve their performance significantly. Some works also argue simple STM can attain competitive performance with proper design. Hence, we aim to identify the real difference and performance gains among different STMs under a unified and optimized overall design (architecture and training recipes). Hence, we elaborate a unified architecture, upon which a series of STMs are fit into it for comparisons and analyses.

Currently Supported STMs

  • Halo Attention, a local attention STM from HaloNet.
  • Spatial Reduction Attention, a global attention STM from PVT.
  • Shifted Window Attention, a local attention STM from Swin Transformer.
  • Depth-Wise Convolution, which has been proven to be a simple yet effective STM by ConvNeXt.
  • Deformable Convolution v3 (DCNv3, to be added), which is a recent dynamic convolution operator used in InternImage.

Updates

  • [2024.10.06] The code and checkpoints for Unified-InternImage are released.
  • [2022.12.30] The code for ImageNet-1k classification is released.
  • [2022.12.30] The code for COCO object detection is released.

Highlights

  • A unified architecture for spatial token mixers, which shows better performance compared with the original implementations.
  • A re-implemented Halo-Attention (HaloNet) yields strong performance.

Usage

  • Developing new spatial token mixers.
  • Using the pretrained models for downstream tasks.

Requirements and Data Preparation

Installation

We suggest the python 3.8 environments with the following packages:

  • torch>=1.7.0; torchvision>=0.8.0 (Follow official guide to install PyTorch, GPU version recommended)
  • pytorch-image-models (pip install timm=0.6.7)
  • pyyaml (pip install pyyaml)
  • opencv-python (pip install opencv-python) Packages with different versions may also work. We only test the aforementioned version.

If you want to use the U-InternImage, please install the MultiScaleDeformableAttention:

cd ./classification/ops
sh make.sh

Data Preparation

ImageNet with the following folder structure, and you can extract ImageNet by this script.

│imagenet/
├──meta/
|  ├──train.txt
│  ├──val.txt
├──train/
│  ├── n01440764
│  │   ├── n01440764_10026.JPEG
│  │   ├── n01440764_10027.JPEG
│  │   ├── ......
│  ├── ......
├──val/
│  ├── n01440764
│  │   ├── ILSVRC2012_val_00000293.JPEG
│  │   ├── ILSVRC2012_val_00002138.JPEG
│  │   ├── ......
│  ├── ......

Using Pretrained Models

You can refer to the models folder to create any stand-alone models, and then load them with the pre-trained weights. All the pre-trained weights can be found here.

All models

U-HaloNet U-PVT U-Swin Transformer U-ConvNeXt U-InternImage
Micro (~4.5M) 75.8% | Download 72.8% | Download 74.4% | Download 75.1% | Download 75.3% | Download
Tiny (~30M) 83.0% | Download 82.1% | Download 82.3% | Download 82.2% | Download 83.3% | Download
Small (~50M) 84.0% | Download 83.2% | Download 83.3% | Download 83.1% | Download 84.1% | Download
Base (~100M) 84.6% | Download 83.4% | Download 83.7% | Download 83.7% | Download 84.5% | Download

Evaluation of Classification Models

You can use the shell scripts in shell/eval to evaluate the model. The provided code works with slurm. If you are using a slurm-supported cluster to run the model, please modify the virtual partition and checkpoint path. For example, to evaluate HaloNet-Tiny on ImageNet-1k, you use the following command:

cd ./classification
sh ./shell/eval/eval.sh $MODEL_NAME$

The $MODEL_NAME$ for different models are listed as follows:

U-HaloNet U-PVT U-Swin Transformer U-ConvNeXt U-InternImage
Micro (~4.5M) unified_halo_micro unified_pvt_micro unified_swin_micro unified_convnext_micro unified_dcn_v3_micro
Tiny (~30M) unified_halo_tiny unified_pvt_tiny unified_swin_tiny unified_convnext_tiny unified_dcn_v3_tiny
Small (~50M) unified_halo_small unified_pvt_small unified_swin_small unified_convnext_small unified_dcn_v3_small
Base (~100M) unified_halo_base unified_pvt_base unified_swin_base unified_convnext_base unified_dcn_v3_base

Training Classification Models

Currently, this repository only supports ImageNet-1k training. ImageNet-21k training will be updated soon. You can use the shell scripts in shell/1k_pretrain to reproduce our results. For example, if you want to train HaloNet-Tiny, you can use the following command:

cd ./classification
sh ./shell/1k_pretrain/transformer.sh $MODEL_NAME$

Remember to modify the output directory and the virtual partition. The scripts also work with slurm, you can use PyTorch official DDP mechanism to launch the training with some modifications, refer to ConvNeXt for details.

Training and Evaluation on Object Detection

Plese refer this guide the train and evaluate the models on object detection.

Bibtex

If you find our work or models useful, please consider citing our paper as follows:

@article{hu2024demystify,
  title={Demystify Transformers \& Convolutions in Modern Image Deep Networks},
  author={Hu, Xiaowei and Shi, Min and Wang, Weiyun and Wu, Sitong and Xing, Linjie and Wang, Wenhai and Zhu, Xizhou and Lu, Lewei and Zhou, Jie and Wang, Xiaogang and Qiao, Yu and Dai, Jifeng},
  journal={IEEE Transactions on Pattern Analysis and Machine Intelligence (IEEE TPAMI)},
  year={2024}
}

Acknowledgment

  • A large part of our code is borrowed from Timm library (pytorch-image-models) and DeiT implementation (code).
  • We partly refer to the unofficial HaloNet implementation of timm lib (code) and lucidrains (code) when re-producing Halo-attention.