RobustART: Benchmarking Robustness on Architecture Design and Training Techniques

Overview

RobustART: Benchmarking Robustness on Architecture Design and Training Techniques

Website: https://robust.art

Paper: https://openreview.net/forum?id=wu1qmnC32fB

Document: https://robust.art/api

Leaderboard: http://robust.art/results

Abstract

Deep neural networks (DNNs) are vulnerable to adversarial noises, which motivates the benchmark of model robustness. Existing benchmarks mainly focus on evaluating the defenses, but there are no comprehensive studies on how architecture design and general training techniques affect robustness. Comprehensively benchmarking their relationships will be highly beneficial for better understanding and developing robust DNNs. Therefore, we propose RobustART, the first comprehensive Robustness investigation benchmark on ImageNet (including open-source toolkit, pre-trained model zoo, datasets, and analyses) regarding ARchitecture design (44 human-designed off-the-shelf architectures and 1200+ networks from neural architecture search) and Training techniques (10+ general techniques, e.g., data augmentation) towards diverse noises (adversarial, natural, and system noises). Extensive experiments revealed and substantiated several insights for the first time, for example: (1) adversarial training largely improves the clean accuracy and all types of robustness for Transformers and MLP-Mixers; (2) with comparable sizes, CNNs > Transformers > MLP-Mixers on robustness against natural and system noises; Transformers > MLP-Mixers > CNNs on adversarial robustness; for some light-weight architectures (e.g., EfficientNet, MobileNetV2, and Mo- bileNetV3), increasing model sizes or using extra training data reduces robustness. Our benchmark http://robust.art/: (1) presents an open-source platform for conducting comprehensive evaluation on different robustness types; (2) provides a variety of pre-trained models that can be utilized for downstream applications; (3) proposes a new perspective to better understand the mechanism of DNNs towards designing robust architectures, backed up by comprehensive analysis. We will continuously contribute to build this open eco-system for the community.

Installation

You use conda to create a virtual environment to run this project.

git clone --recurse-submodules https://github.com/DIG-Beihang/RobustART.git
cd robustART
conda create --name RobustART python=3.6.9
conda activate RobustART
pip install -r requirements.txt

After this, you should installl pytorch and torchvision package which meet your GPU and CUDA version according to https://pytorch.org

Quick Start

Common Setting

If you want to use this project to train or evaluate model(s), you can choose to create a work directory for saving config, checkpoints, scripts etc.

We have put some example for trainging or evlaluate. You can use it as follows

cd exprs/exp/imagenet-a_o-loop
bash run.sh

Add Noise

You can use the AddNoise's add_noise function to add multiple noise for one image or a batch of images The supported noise list is: ['imagenet-s', 'imagenet-c', 'pgd_linf', 'pgd_l2', 'fgsm', 'autoattack_linf', 'mim_linf', 'pgd_l1']

Example of adding ImageNet-C noise for image

from RobustART.noise import AddNoise
NoiseClass = AddNoise(noise_type='imagenet-c')
# set the config of one kind of noise
NoiseClass.set_config(corruption_name='gaussian_noise')
image_addnoise = NoiseClass.add_noise(image='test_input.jpeg')

Training Pipeline

We provided cls_solver solver to train a model with a specific config

Example of using base config to train a resnet50

cd exprs/robust_baseline_exp/resnet/resnet50
#Change the python path to the root path
PYTHONPATH=$PYTHONPATH:../../../../
srun -n8 --gpu "python -u -m RobustART.training.cls_solver --config config.yaml"

Evaluation Pipeline

We evaluate model(s) of different dataset, we provides several solver to evaluate the model on one or some specific dataset(s)

Example of evaluation on ImageNet-A and ImageNet-O dataset

cd exprs/exp/imagenet-a_0-loop
#Change the python path to the root path
PYTHONPATH=$PYTHONPATH:../../../
srun -n8 --gpu "python -u -m RobustART.training.cls_solver --config config.yaml"

Metrics

We provided metrics APIs, so that you can use these APIs to evaluate results for ImageNet-A,O,P,C,S and Adv noise.

from RobustART.metrics import ImageNetAEvaluator
metric = ImageNetAEvaluator()
metric.eval(res_file)

Citation

@article{tang2021robustart,
title={RobustART: Benchmarking Robustness on Architecture Design and Training Techniques},
author={Shiyu Tang and Ruihao Gong and Yan Wang and Aishan Liu and Jiakai Wang and Xinyun Chen and Fengwei Yu and Xianglong Liu and Dawn Song and Alan Yuille and Philip H.S. Torr and Dacheng Tao},
journal={https://openreview.net/forum?id=wu1qmnC32fB},
year={2021}}
Example for AUAV 2022 with obstacle avoidance.

AUAV 2022 Sample This is a sample PX4 based quadrotor path planning framework based on Ubuntu 20.04 and ROS noetic for the IEEE Autonomous UAS 2022 co

James Goppert 11 Sep 16, 2022
Language models are open knowledge graphs ( non official implementation )

language-models-are-knowledge-graphs-pytorch Language models are open knowledge graphs ( work in progress ) A non official reimplementation of Languag

theblackcat102 132 Dec 18, 2022
Prototypical Cross-Attention Networks for Multiple Object Tracking and Segmentation, NeurIPS 2021 Spotlight

PCAN for Multiple Object Tracking and Segmentation This is the offical implementation of paper PCAN for MOTS. We also present a trailer that consists

ETH VIS Group 328 Dec 29, 2022
Official repository for MixFaceNets: Extremely Efficient Face Recognition Networks

MixFaceNets This is the official repository of the paper: MixFaceNets: Extremely Efficient Face Recognition Networks. (Accepted in IJCB2021) https://i

Fadi Boutros 51 Dec 13, 2022
Complete system for facial identity system

Complete system for facial identity system. Include one-shot model, database operation, features visualization, monitoring

4 May 02, 2022
Unofficial Implement PU-Transformer

PU-Transformer-pytorch Pytorch unofficial implementation of PU-Transformer (PU-Transformer: Point Cloud Upsampling Transformer) https://arxiv.org/abs/

Lee Hyung Jun 7 Sep 21, 2022
BLEURT is a metric for Natural Language Generation based on transfer learning.

BLEURT: a Transfer Learning-Based Metric for Natural Language Generation BLEURT is an evaluation metric for Natural Language Generation. It takes a pa

Google Research 492 Jan 05, 2023
[BMVC2021] The official implementation of "DomainMix: Learning Generalizable Person Re-Identification Without Human Annotations"

DomainMix [BMVC2021] The official implementation of "DomainMix: Learning Generalizable Person Re-Identification Without Human Annotations" [paper] [de

Wenhao Wang 17 Dec 20, 2022
HashNeRF-pytorch - Pure PyTorch Implementation of NVIDIA paper on Instant Training of Neural Graphics primitives

HashNeRF-pytorch Instant-NGP recently introduced a Multi-resolution Hash Encodin

Yash Sanjay Bhalgat 616 Jan 06, 2023
Github for the conference paper GLOD-Gaussian Likelihood OOD detector

FOOD - Fast OOD Detector Pytorch implamentation of the confernce peper FOOD arxiv link. Abstract Deep neural networks (DNNs) perform well at classifyi

17 Jun 19, 2022
Alpha-IoU: A Family of Power Intersection over Union Losses for Bounding Box Regression

Alpha-IoU: A Family of Power Intersection over Union Losses for Bounding Box Regression YOLOv5 with alpha-IoU losses implemented in PyTorch. Example r

Jacobi(Jiabo He) 147 Dec 05, 2022
XViT - Space-time Mixing Attention for Video Transformer

XViT - Space-time Mixing Attention for Video Transformer This is the official implementation of the XViT paper: @inproceedings{bulat2021space, title

Adrian Bulat 33 Dec 23, 2022
SimpleDepthEstimation - An unified codebase for NN-based monocular depth estimation methods

SimpleDepthEstimation Introduction This is an unified codebase for NN-based monocular depth estimation methods, the framework is based on detectron2 (

8 Dec 13, 2022
FusionNet: A deep fully residual convolutional neural network for image segmentation in connectomics

FusionNet_Pytorch FusionNet: A deep fully residual convolutional neural network for image segmentation in connectomics Requirements Pytorch 0.1.11 Pyt

Choi Gunho 102 Dec 13, 2022
G-NIA model from "Single Node Injection Attack against Graph Neural Networks" (CIKM 2021)

Single Node Injection Attack against Graph Neural Networks This repository is our Pytorch implementation of our paper: Single Node Injection Attack ag

Shuchang Tao 18 Nov 21, 2022
Collects many various multi-modal transformer architectures, including image transformer, video transformer, image-language transformer, video-language transformer and related datasets

The repository collects many various multi-modal transformer architectures, including image transformer, video transformer, image-language transformer, video-language transformer and related datasets

Jun Chen 139 Dec 21, 2022
Kaggle competition: Springleaf Marketing Response

PruebaEnel Prueba Kaggle-Springleaf-master Prueba Kaggle-Springleaf Kaggle competition: Springleaf Marketing Response Competencia de Kaggle: Marketing

1 Feb 09, 2022
Dynamic Graph Event Detection

DyGED Dynamic Graph Event Detection Get Started pip install -r requirements.txt TODO Paper link to arxiv, and how to cite. Twitter Weather dataset tra

Mert Koşan 3 May 09, 2022
Melanoma Skin Cancer Detection using Convolutional Neural Networks and Transfer Learning🕵🏻‍♂️

This is a Kaggle competition in which we have to identify if the given lesion image is malignant or not for Melanoma which is a type of skin cancer.

Vipul Shinde 1 Jan 27, 2022
Code for the paper Task Agnostic Morphology Evolution.

Task-Agnostic Morphology Optimization This repository contains code for the paper Task-Agnostic Morphology Evolution by Donald (Joey) Hejna, Pieter Ab

Joey Hejna 18 Aug 04, 2022