:warning: Check out our MacOS/Windows Software on our official webpage.
Fawkes is a privacy protection system developed by researchers at SANDLab, University of Chicago. For more information about the project, please refer to our project webpage. Contact us at fawkes-team@googlegroups.com.
We published an academic paper to summarize our work "Fawkes: Protecting Personal Privacy against Unauthorized Deep Learning Models" at USENIX Security 2020.
This code is intended only for personal privacy protection or academic research.
$ fawkes
Options:
-m
, --mode
: the tradeoff between privacy and perturbation size. Select from low
, mid
, high
. The
higher the mode is, the more perturbation will add to the image and provide stronger protection.-d
, --directory
: the directory with images to run protection.-g
, --gpu
: the GPU id when using GPU for optimization.--batch-size
: number of images to run optimization together. Change to >1 only if you have extremely powerful
compute power.--format
: format of the output image (png or jpg).fawkes -d ./imgs --mode low
or python3 protection.py -d ./imgs --mode low
batch-size=1
on CPU and batch-size>1
on GPUs.setup.py
, and replace tensorflow with tensorflow-gpu. Then you can run Fawkes
by python3 fawkes/protection.py [args]
.We are actively working on this. Python scripts that can test the protection effectiveness will be ready shortly.
Install from PyPI:
pip install fawkes
If you don't have root privilege, please try to install on user namespace: pip install --user fawkes
.
For academic researchers, whether seeking to improve fawkes or to explore potential vunerability, please refer to the following guide to test Fawkes.
To protect a class in a dataset, first move the label's image to a separate location and run Fawkes. Please
use --debug
option and set batch-size
to a reasonable number (i.e 16, 32). If the images are already cropped and
aligned, then also use the no-align
option.
@inproceedings{shan2020fawkes,
title={Fawkes: Protecting Personal Privacy against Unauthorized Deep Learning Models},
author={Shan, Shawn and Wenger, Emily and Zhang, Jiayun and Li, Huiying and Zheng, Haitao and Zhao, Ben Y},
booktitle={Proc. of {USENIX} Security},
year={2020}
}