Members Iantsa Provost, Lilian Rebiere-Pouyade, Bastien Soucasse, and Alexey Zhukov.
Paper Perceptual Losses for Real-Time Style Transfer and Super-Resolution.
Remotes GitHub, GitLab (CREMI, Université de Bordeaux)
The report can be found in the report
subfolder, containing the latest compiled PDF and the sources.
references.bib
is the references source file.report.pdf
is tha latest compiled report.report.tex
is the LaTeX main source file.
The images
subfolder contains the images used in the report.tex
source file.
To compile from the sources, you need a LaTeX compiler such as TeXLive.
The actual implementation sources are in the src
subfolder.
datasets.py
is the custom dataset implementation file.environment.py
is the global parameters and variables file.models.py
is the Image Transformer Network (and its blocks) and the Loss Network implementation file.sr_dataset.ipynb
is the custom dataset experiments file.sr.ipynb
is the model experiments file.test.py
is the testing script implementation file.train.py
is the training script implementation file.utils.py
is an utilitary file.
PyTorch was used for the implementation. The data
subfolder will contain the image data used for training, i.e., our custom dataset. The models
subfolder will store the saved models after training (used for testing).