# Noise detection using 26 attributes ## Description Noise detection on synthesis images with 26 attributes obtained using few filters. Filters list: - average - wiener - median - gaussian - wavelet ## Requirements ``` pip install -r requirements.txt ``` ## Project structure ### Link to your dataset You need database which respects this structure: - dataset/ - Scene1/ - Scene1_00050.png - Scene1_00070.png - ... - Scene1_01180.png - Scene1_01200.png - Scene2/ - ... - ... ### Code architecture description - **modules/\***: contains all modules usefull for the whole project (such as configuration variables) - **analysis/\***: contains all jupyter notebook used for analysis during thesis - **generate/\***: contains python scripts for generate data from scenes (described later) - **data_processing/\***: all python scripts for generate custom dataset for models - **prediction/\***: all python scripts for predict new threshold from computed models - **data_attributes.py**: files which contains all extracted features implementation from an image. - **custom_config.py**: override the main configuration project of `modules/config/global_config.py` - **train_model.py**: script which is used to run specific model available. ### Generated data directories: - **data/\***: folder which will contain all generated *.train* & *.test* files in order to train model. - **data/saved_models/\***: all scikit learn or keras models saved. - **data/models_info/\***: all markdown files generated to get quick information about model performance and prediction obtained after running `run/runAll_*.sh` script. - **data/results/**: This folder contains `model_comparisons.csv` file used for store models performance. ## License [The MIT license](LICENSE)