Interpretable_cnns_via_feedforward_design

Official Implementation for FF_designed CNNs
Alternatives To Interpretable_cnns_via_feedforward_design
Project NameStarsDownloadsRepos Using ThisPackages Using ThisMost Recent CommitTotal ReleasesLatest ReleaseOpen IssuesLicenseLanguage
Foolbox2,600953 months ago70April 02, 202226mitPython
A Python toolbox to create adversarial examples that fool neural networks in PyTorch, TensorFlow, and JAX
One Pixel Attack Keras1,078
3 years ago4mitJupyter Notebook
Keras implementation of "One pixel attack for fooling deep neural networks" using differential evolution on Cifar10 and ImageNet
Procedural Advml40
3 years agomitJupyter Notebook
Task-agnostic universal black-box attacks on computer vision neural network via procedural noise (CCS'19)
Adversarial Medicine38
5 years ago1mitJupyter Notebook
Code for the paper "Adversarial Attacks Against Medical Deep Learning Systems"
Cleverhans Attacking Bnns17
6 years ago1mitPython
Source for paper "Attacking Binarized Neural Networks"
Advml Traffic Sign15
6 years agomitJupyter Notebook
Code for the 'DARTS: Deceiving Autonomous Cars with Toxic Signs' paper
Translearn14
5 years ago1mitPython
Code implementation of the paper "With Great Training Comes Great Vulnerability: Practical Attacks against Transfer Learning", at USENIX Security 2018
Interpretable_cnns_via_feedforward_design12
5 years agoJupyter Notebook
Official Implementation for FF_designed CNNs
Padify8
4 years ago5mitPython
Framework to perform PAD (Presentation Attack Detection) on Facial Recognition systems through intrinsic properties and Deep Neural Networks - Still Under Development
Ddos Ml Detection8
4 years ago1apache-2.0Python
Detects DDOS attacks using ML
Alternatives To Interpretable_cnns_via_feedforward_design
Select To Compare


Alternative Project Comparisons
Popular Keras Projects
Popular Attack Projects
Popular Machine Learning Categories

Get A Weekly Email With Trending Projects For These Categories
No Spam. Unsubscribe easily at any time.
Jupyter Notebook
Keras
Attack