The original work is based on
Original Travis build
Python package which provides several functions to compute and test cameras PRNU.
We have added, to the original work, the possibility to carry out noise extraction using a PyTorch model which accepts normalized images whose values are between 0 and 1.
Since the project has been adapted to deal with the following FFDNet implementation, the input of such model should be an image with size [1, channels, heigth, width] and the standard deviation (sigma) of the noise.
- Luca Bondi (luca.bondi@polimi.it)
- Paolo Bestagini (paolo.bestagini@polimi.it)
- Nicolò Bonettini (nicolo.bonettini@polimi.it)
- Simone Alghisi (simone.alghisi-1@studenti.unitn.it)
- Samuele Bortolotti (samuele.bortolotti@studenti.unitn.it)
- Massimo Rizzoli (massimo.rizzoli@studenti.unitn.it)
Clone this repository
git clone https://github.com/samuelebortolotti/prnu-pythonMove to the project folder
cd prnu-pythonThe installation with pip can be performed as follows
pip install .Or directly from GitHub
pip install git+git://github.com/samuelebortolotti/prnu-python@v[version]
Where [version] is the version of the
pip install git+git://github.com/samuelebortolotti/prnu-python@v2.0
Or you can add the package in your requirements.txt file, and
install it later, by including the following line
git+git://github.com/samuelebortolotti/prnu-python@v[version]
For example:
git+git://github.com/samuelebortolotti/prnu-python@v2.0
Now you can import the prnu package whenever and wherever you want.
You can use the GNU Makefile to generate the virtual environment by
typing
make envActivate the virtual environment
source venv/prnu/bin/activateInstall the requirements
make installThe documentation is generated using Sphinx.
First, install the development requirements
make install-devThen generate the Sphinx layout
make doc-layoutGenerate the documentation content; the documentation will be generated
in the docs folder.
make docThen, you can open the documentation through xdg-open by typing
make open-docYou can run the tests by typing
cd test
python -m unittest test_prnu.TestPrnuTested with Python >= 3.6
Reference MATLAB implementation by Binghamton university: http://dde.binghamton.edu/download/camera_fingerprint/