Pytorch implementation of ICASSP 2022 paper Attention Probe: Vision Transformer Distillation in the Wild

Overview

Attention Probe: Vision Transformer Distillation in the Wild

License: MIT

Jiahao Wang, Mingdeng Cao, Shuwei Shi, Baoyuan Wu, Yujiu Yang
In ICASSP 2022

This code is the Pytorch implementation of ICASSP 2022 paper Attention Probe: Vision Transformer Distillation in the Wild

Overview

  • We propose the concept of Attention Probe, a special section of the attention map to utilize a large amount of unlabeled data in the wild to complete the vision transformer data-free distillation task. Instead of generating images from the teacher network with a series of priori, images most relevant to the given pre-trained network and tasks will be identified from a large unlabeled dataset (e.g., Flickr) to conduct the knowledge distillation task.
  • We propose a simple yet efficient distillation algorithm, called probe distillation, to distill the student model using intermediate features of the teacher model, which is based on the Attention Probe.

Prerequisite

We use Pytorch 1.7.1, and CUDA 11.0. You can install them with

pip install torch==1.7.1+cu110 torchvision==0.8.2+cu110 torchaudio==0.7.2 -f https://download.pytorch.org/whl/torch_stable.html

It should also be applicable to other Pytorch and CUDA versions.

Usage

Data Preparation

First, you need to modify the storage format of the cifar-10/100 and tinyimagenet dataset to the style of ImageNet, etc. CIFAR 10 run:

python process_cifar10.py

CIFAR 100 run:

python process_cifar100.py

Tiny-ImageNet run:

python process_tinyimagenet.py
python process_move_file.py

The dataset dir should have the following structure:

dir/
  train/
    ...
  val/
    n01440764/
      ILSVRC2012_val_00000293.JPEG
      ...
    ...

Train a normal teacher network

For this step you need to train normal teacher transformer models for selecting valuable data from the wild. We train the teacher model based on the timm PyTorch library:

timm

Our pretrained teacher models (CIFAR-10, CIFAR-100, ImageNet, Tiny-ImageNet, MNIST) can be downloaded from here:

Pretrained teacher models

Select valuable data from the wild

Then, you can use the Attention Probe method to select valuable data in the wild dataset.

To select valuable data CIFAR-10 run:

bash training.sh
(CUDA_VISIBLE_DEVICES=0 python DFND_DeiT-train.py --dataset cifar10 --data_cifar $root_cifar10 --data_imagenet $root_wild --num_select 650000 --teacher_dir $teacher_cifar10 --selected_file $selected_cifar10 --output_dir $output_student_cifar10 --nb_classes 10 --lr_S 7.5e-4 --attnprobe_sel --attnprobe_dist )

CIFAR-100 run:

bash training.sh
(CIFAR 100 run: CUDA_VISIBLE_DEVICES=0 python DFND_DeiT-train.py --dataset cifar10 --data_cifar $root_cifar10 --data_imagenet $root_wild --num_select 650000 --teacher_dir $teacher_cifar10 --selected_file $selected_cifar10 --output_dir $output_student_cifar10 --nb_classes 10 --lr_S 7.5e-4 --attnprobe_sel --attnprobe_dist )

TinyImageNet run:

bash training_tinyimagenet.sh

ImageNet run:

bash training_imagenet.sh

After you will get "class_weights.pth, pred_out.pth, value_blk3.pth, value_blk7.pth, value_out.pth" in '/selected/cifar10/' or '/selected/cifar100/' directory, you have already obtained the selected data.

Probe Knowledge Distillation for Student networks

Then you can distill the student model using intermediate features of the teacher model based on the selected data.

bash training.sh
(CIFAR 10 run: CUDA_VISIBLE_DEVICES=0 python DFND_DeiT-train.py --dataset cifar100 --data_cifar $root_cifar100 --data_imagenet $root_wild --num_select 650000 --teacher_dir $teacher_cifar100 --selected_file $selected_cifar100 --output_dir $output_student_cifar100 --nb_classes 100 --lr_S 8.5e-4 --attnprobe_sel --attnprobe_dist)

(CIFAR 100 run: CUDA_VISIBLE_DEVICES=0,1,2,3 python DFND_DeiT-train.py --dataset cifar100 --data_cifar $root_cifar100 --data_imagenet $root_wild --num_select 650000 --teacher_dir $teacher_cifar100 --selected_file $selected_cifar100 --output_dir $output_student_cifar100 --nb_classes 100 --lr_S 8.5e-4 --attnprobe_sel --attnprobe_dist)

TinyImageNet run:

bash training_tinyimagenet.sh

ImageNet run:

bash training_imagenet.sh

you will get the student transformer model in '/output/cifar10/student/' or '/output/cifar100/student/' directory.

Our distilled student models (CIFAR-10, CIFAR-100, ImageNet, Tiny-ImageNet, MNIST) can be downloaded from here: Distilled student models

Results

Citation

@inproceedings{
wang2022attention,
title={Attention Probe: Vision Transformer Distillation in the Wild},
author={Jiahao Wang, Mingdeng Cao, Shuwei Shi, Baoyuan Wu, Yujiu Yang},
booktitle={International Conference on Acoustics, Speech and Signal Processing},
year={2022},
url={https://2022.ieeeicassp.org/}
}

Acknowledgement

Owner
IIGROUP
The Intelligent Interaction Group at Tsinghua University
IIGROUP
Rank 3 : Source code for OPPO 6G Data Generation Challenge

OPPO 6G Data Generation with an E2E Framework Homepage of OPPO 6G Data Generation Challenge Datasets H1_32T4R.mat H2_32T4R.mat Please put the original

Sen Pei 97 Jan 07, 2023
Model-free Vehicle Tracking and State Estimation in Point Cloud Sequences

Model-free Vehicle Tracking and State Estimation in Point Cloud Sequences 1. Introduction This project is for paper Model-free Vehicle Tracking and St

TuSimple 92 Jan 03, 2023
Implementation of UNet on the Joey ML framework

Independent Research Project - Code Joey can be cloned from here https://github.com/devitocodes/joey/. Devito and other dependencies such as PyTorch a

Navjot Kukreja 1 Oct 21, 2021
A very tiny, very simple, and very secure file encryption tool.

Picocrypt is a very tiny (hence "Pico"), very simple, yet very secure file encryption tool. It uses the modern ChaCha20-Poly1305 cipher suite as well

Evan Su 1k Dec 30, 2022
DIR-GNN - Discovering Invariant Rationales for Graph Neural Networks

DIR-GNN "Discovering Invariant Rationales for Graph Neural Networks" (ICLR 2022)

Ying-Xin (Shirley) Wu 70 Nov 13, 2022
[SDM 2022] Towards Similarity-Aware Time-Series Classification

SimTSC This is the PyTorch implementation of SDM2022 paper Towards Similarity-Aware Time-Series Classification. We propose Similarity-Aware Time-Serie

Daochen Zha 49 Dec 27, 2022
Unofficial implementation of Pix2SEQ

Unofficial-Pix2seq: A Language Modeling Framework for Object Detection Unofficial implementation of Pix2SEQ. Please use this code with causion. Many i

159 Dec 12, 2022
Software that can generate photos from paintings, turn horses into zebras, perform style transfer, and more.

CycleGAN PyTorch | project page | paper Torch implementation for learning an image-to-image translation (i.e. pix2pix) without input-output pairs, for

Jun-Yan Zhu 11.5k Dec 30, 2022
Python package to generate image embeddings with CLIP without PyTorch/TensorFlow

imgbeddings A Python package to generate embedding vectors from images, using OpenAI's robust CLIP model via Hugging Face transformers. These image em

Max Woolf 81 Jan 04, 2023
Detectron2 for Document Layout Analysis

Detectron2 trained on PubLayNet dataset This repo contains the training configurations, code and trained models trained on PubLayNet dataset using Det

Himanshu 163 Nov 21, 2022
Python library for analysis of time series data including dimensionality reduction, clustering, and Markov model estimation

deeptime Releases: Installation via conda recommended. conda install -c conda-forge deeptime pip install deeptime Documentation: deeptime-ml.github.io

495 Dec 28, 2022
Multi-tool reverse engineering collaboration solution.

CollaRE v0.3 Intorduction CollareRE is a tool for collaborative reverse engineering that aims to allow teams that do need to use more then one tool du

105 Nov 27, 2022
PyTorch implementation of Self-supervised Contrastive Regularization for DG (SelfReg)

SelfReg PyTorch official implementation of Self-supervised Contrastive Regularization for Domain Generalization (SelfReg, https://arxiv.org/abs/2104.0

64 Dec 16, 2022
Raptor-Multi-Tool - Raptor Multi Tool With Python

Promises 🔥 20 Stars and I'll fix every error that there is 50 Stars and we will

Aran 44 Jan 04, 2023
Pytorch implementation of forward and inverse Haar Wavelets 2D

Pytorch implementation of forward and inverse Haar Wavelets 2D

Sergei Belousov 9 Oct 30, 2022
Fast, differentiable sorting and ranking in PyTorch

Torchsort Fast, differentiable sorting and ranking in PyTorch. Pure PyTorch implementation of Fast Differentiable Sorting and Ranking (Blondel et al.)

Teddy Koker 655 Jan 04, 2023
Weakly Supervised Scene Text Detection using Deep Reinforcement Learning

Weakly Supervised Scene Text Detection using Deep Reinforcement Learning This repository contains the setup for all experiments performed in our Paper

Emanuel Metzenthin 3 Dec 16, 2022
Implements pytorch code for the Accelerated SGD algorithm.

AccSGD This is the code associated with Accelerated SGD algorithm used in the paper On the insufficiency of existing momentum schemes for Stochastic O

205 Jan 02, 2023
Multi-task Learning of Order-Consistent Causal Graphs (NeuRIPs 2021)

Multi-task Learning of Order-Consistent Causal Graphs (NeuRIPs 2021) Authors: Xinshi Chen, Haoran Sun, Caleb Ellington, Eric Xing, Le Song Link to pap

Xinshi Chen 2 Dec 20, 2021
EsViT: Efficient self-supervised Vision Transformers

Efficient Self-Supervised Vision Transformers (EsViT) PyTorch implementation for EsViT, built with two techniques: A multi-stage Transformer architect

Microsoft 352 Dec 25, 2022