Pytorch implementation of "Geometrically Adaptive Dictionary Attack on Face Recognition" (WACV 2022)

Related tags

Deep LearningGADA
Overview

Geometrically Adaptive Dictionary Attack on Face Recognition

This is the Pytorch code of our paper "Geometrically Adaptive Dictionary Attack on Face Recognition" (WACV2022).

Getting started

Dependencies

The code of GADA uses various packages such as Python 3.7, Pytorch 1.6.0, cython=0.29.21, and it is easy to install them by copying the existing environment to the current system to install them easily.

We have saved the conda environment for both Windows and Ubuntu, and you can copy the conda environment to the current system. You can install the conda environment by entering the following command at the conda prompt.

conda env create -f GADA_ubuntu.yml

After setting the environment, you may need to compile the 3D renderer by entering the command.

At the '_3DDFA_V2\Sim3DR' path

python setup.py build_ext --inplace

Since 3D Renderer has already been compiled on Windows and Ubuntu, there may be no problem in running the experiment without executing the above command.

Pretrained face recognition models

You can download the pretrained face recogntion models from face.evoLVe and CurricularFace

After downloading the checkpoint files, place 'backbone_ir50_ms1m_epoch120.pth' into '/checkpoint/ms1m-ir50/' and 'CurricularFace_Backbone.pth' into '/checkpoint/'

Dataset

You can download test image sequences for the LFW and CPLFW datasets from the following links.

LFW test image sequence

CPLFW test image sequence

Place them into the root folder of the project.

Each image sequence has 500 image pairs for dodging and impersonation attack.

These images are curated from the aligned face datasets provided by face.evoLVe.

Usage

You can perform an attack experiment by entering the following command.

python attack.py --model=2 --attack=EAGD --dataset=LFW

The model argument is the index of the target facial recognition model.

1: CurricularFace ResNet-100, 2: ArcFace ResNet-50, 3: FaceNet

The attack argument indicates the attack method.

HSJA, SO, EA, EAD, EAG, EAGD, EAG, EAGDR, EAGDO, SFA, SFAD, SFAG, SFAGD

If --targeted is given as an execution argument, impersonation attack is performed. If no argument is given, dodging attack is performed by default.

The dataset argument sets which test dataset to use and supports LFW and CPLFW.

If you want to enable stateful detection as a defense, pass the --defense=SD argument to the command line.

When an experiment is completed for 500 test images, a 'Dataset_NumImages_targeted_attackname_targetmodel_defense_.pth' file is created in the results folder like 'CPLFW_500_1_EVGD_IR_50_gaussian_.pth'.

Using plotter.py, you can load the above saved file and print various results, such as the l2 norm of perturbation at 1000, 2000, 5000, and 10000 steps, the average number of queries until the l2 norm of perturbation becomes 2 or 4, adversarial examples, etc.

Citation

If you find this work useful, please consider citing our paper :) We provide a BibTeX entry of our paper below:

    @article{byun2021geometrically,
    title={Geometrically Adaptive Dictionary Attack on Face Recognition},
    author={Byun, Junyoung and Go, Hyojun and Kim, Changick},
    journal={arXiv preprint arXiv:2111.04371},
    year={2021}
    }

Acknowledgement

TensorFlow code for the neural network presented in the paper: "Structural Language Models of Code" (ICML'2020)

SLM: Structural Language Models of Code This is an official implementation of the model described in: "Structural Language Models of Code" [PDF] To ap

73 Nov 06, 2022
[ICML 2020] "When Does Self-Supervision Help Graph Convolutional Networks?" by Yuning You, Tianlong Chen, Zhangyang Wang, Yang Shen

When Does Self-Supervision Help Graph Convolutional Networks? PyTorch implementation for When Does Self-Supervision Help Graph Convolutional Networks?

Shen Lab at Texas A&M University 106 Nov 11, 2022
Edison AT is software Depression Assistant personal.

Edison AT Edison AT is software / program Depression Assistant personal. Feature: Analyze emotional real-time from face. Audio Edison(Comingsoon relea

Ananda Rauf 2 Apr 24, 2022
[EMNLP 2021] Distantly-Supervised Named Entity Recognition with Noise-Robust Learning and Language Model Augmented Self-Training

RoSTER The source code used for Distantly-Supervised Named Entity Recognition with Noise-Robust Learning and Language Model Augmented Self-Training, p

Yu Meng 60 Dec 30, 2022
Mesh TensorFlow: Model Parallelism Made Easier

Mesh TensorFlow - Model Parallelism Made Easier Introduction Mesh TensorFlow (mtf) is a language for distributed deep learning, capable of specifying

1.3k Dec 26, 2022
PICARD - Parsing Incrementally for Constrained Auto-Regressive Decoding from Language Models

This is the official implementation of the following paper: Torsten Scholak, Nathan Schucher, Dzmitry Bahdanau. PICARD - Parsing Incrementally for Con

ElementAI 217 Jan 01, 2023
Scalable Multi-Agent Reinforcement Learning

Scalable Multi-Agent Reinforcement Learning 1. Featured algorithms: Value Function Factorization with Variable Agent Sub-Teams (VAST) [1] 2. Implement

3 Aug 02, 2022
Kaggle DSTL Satellite Imagery Feature Detection

Kaggle DSTL Satellite Imagery Feature Detection

Konstantin Lopuhin 206 Oct 29, 2022
Instance Semantic Segmentation List

Instance Semantic Segmentation List This repository contains lists of state-or-art instance semantic segmentation works. Papers and resources are list

bighead 87 Mar 06, 2022
Attack classification models with transferability, black-box attack; unrestricted adversarial attacks on imagenet

Attack classification models with transferability, black-box attack; unrestricted adversarial attacks on imagenet, CVPR2021 安全AI挑战者计划第六期:ImageNet无限制对抗攻击 决赛第四名(team name: Advers)

51 Dec 01, 2022
Collection of TensorFlow2 implementations of Generative Adversarial Network varieties presented in research papers.

TensorFlow2-GAN Collection of tf2.0 implementations of Generative Adversarial Network varieties presented in research papers. Model architectures will

41 Apr 28, 2022
PyTorch implementation of our method for adversarial attacks and defenses in hyperspectral image classification.

Self-Attention Context Network for Hyperspectral Image Classification PyTorch implementation of our method for adversarial attacks and defenses in hyp

22 Dec 02, 2022
Asymmetric Bilateral Motion Estimation for Video Frame Interpolation, ICCV2021

ABME (ICCV2021) Junheum Park, Chul Lee, and Chang-Su Kim Official PyTorch Code for "Asymmetric Bilateral Motion Estimation for Video Frame Interpolati

Junheum Park 86 Dec 28, 2022
Code base of object detection

rmdet code base of object detection. 环境安装: 1. 安装conda python环境 - `conda create -n xxx python=3.7/3.8` - `conda activate xxx` 2. 运行脚本,自动安装pytorch1

3 Mar 08, 2022
BEGAN in PyTorch

BEGAN in PyTorch This project is still in progress. If you are looking for the working code, use BEGAN-tensorflow. Requirements Python 2.7 Pillow tqdm

Taehoon Kim 260 Dec 07, 2022
PolyphonicFormer: Unified Query Learning for Depth-aware Video Panoptic Segmentation

PolyphonicFormer: Unified Query Learning for Depth-aware Video Panoptic Segmentation Winner method of the ICCV-2021 SemKITTI-DVPS Challenge. [arxiv] [

Yuan Haobo 38 Jan 03, 2023
A library for efficient similarity search and clustering of dense vectors.

Faiss Faiss is a library for efficient similarity search and clustering of dense vectors. It contains algorithms that search in sets of vectors of any

Meta Research 18.8k Jan 08, 2023
Husein pet projects in here!

project-suka-suka Husein pet projects in here! List of projects mysejahtera-density. Generate resolution points using meshgrid and request each points

HUSEIN ZOLKEPLI 47 Dec 09, 2022
PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE).

GRACE The official PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE). For a thorough resource collection of self-superv

Big Data and Multi-modal Computing Group, CRIPAC 186 Dec 27, 2022
Llvlir - Low Level Variable Length Intermediate Representation

Low Level Variable Length Intermediate Representation Low Level Variable Length

Michael Clark 2 Jan 24, 2022