Synthesis Images noise detection metrics developed including all approaches using SVD or others compression methods

Jerome Buisine 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
fichiersSVD_light 28fa9f510c New data files generated il y a 5 ans
metrics_predictions 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
models 65e987c73e Only run maxwell scenes il y a 5 ans
.gitignore 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
LICENCE e1a8d9154f Add of script generator il y a 5 ans
README.md 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
generateAndTrainEnsemble_random.sh 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
generateAndTrainSVM.sh 6e57b1f4ab Add of mscn metric il y a 5 ans
generateAndTrainSVM_random.sh 6e57b1f4ab Add of mscn metric il y a 5 ans
generateAndTrain_maxwell.sh 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
generate_all_data.py 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
generate_data_model.py 28fa9f510c New data files generated il y a 5 ans
generate_data_model_random.py 28fa9f510c New data files generated il y a 5 ans
predict_seuil_expe.py 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
predict_seuil_expe_maxwell.py 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
prediction_scene.py 1053504810 Models updated il y a 5 ans
requirements.txt 5911c7da90 New models creation il y a 5 ans
runAll_maxwell.sh 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
save_model_result_in_md.py 6e57b1f4ab Add of mscn metric il y a 5 ans
save_model_result_in_md_maxwell.py 65e987c73e Only run maxwell scenes il y a 5 ans
testModelByScene.sh 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans
testModelByScene_maxwell.sh 1e4d9432f5 Add possibility of metric implementation quickly il y a 5 ans

README.md

Noise detection using SVM

Requirements

pip install -r requirements.txt

Generate all needed data for each metrics

python generate_all_data.py --metric all

For noise detection, many metrics are available :

  • lab
  • mscn
  • low_bits_2
  • low_bits_4

You can also specify metric you want to compute :

python generate_all_data.py --metric mscn

How to use

Multiple folders and scripts are availables :

  • fichiersSVD/* : all scene files information (zones of each scene, SVD descriptor files information and so on...).
  • fichiersSVD_light/* : all scene files information (zones of each scene, SVD descriptor files information and so on...) but here with reduction of information for few scenes. Information used in our case.
  • models/*.py : all models developed to predict noise in image.
  • data/* : folder which will contain all .train & .test files in order to train model.
  • saved_models/*.joblib : all scikit learn models saved.
  • models_info/*.md : all markdown files generated to get quick information about model performance and prediction.

Scripts for generating data files

Two scripts can be used for generating data in order to fit model :

  • generate_data_model.py : zones are specified and stayed fixed for each scene
  • generate_data_model_random.py : zones are chosen randomly (just a number of zone is specified)

Remark : Note here that all python script have --help command.

python generate_data_model.py --help

python generate_data_model.py --output xxxx --interval 0,20  --kind svdne --scenes "A, B, D" --zones "0, 1, 2" --percent 0.7 --sep : --rowindex 1

Parameters explained :

  • output : filename of data (which will be split into two parts, .train and .test relative to your choices).
  • interval : the interval of data you want to use from SVD vector.
  • kind : kind of data ['svd', 'svdn', 'svdne']; not normalize, normalize vector only and normalize together.
  • scenes : scenes choice for training dataset.
  • zones : zones to take for training dataset.
  • percent : percent of data amount of zone to take (choose randomly) of zone
  • sep : output csv file seperator used
  • rowindex : if 1 then row will be like that 1:xxxxx, 2:xxxxxx, ..., n:xxxxxx

Train model

This is an example of how to train a model

python models/xxxxx.py --data 'data/xxxxx.train' --output 'model_file_to_save'

Predict image using model

Now we have a model trained, we can use it with an image as input :

python metrics_predictions/predict_noisy_image_svd_lab.py --image path/to/image.png --interval "x,x" --model saved_models/xxxxxx.joblib --mode 'svdn'

The model will return only 0 or 1 :

  • 1 means noisy image is detected.
  • 0 means image seem to be not noisy.

You can also use other specific metric

python metrics_predictions/predict_noisy_image_svd_mscn.py --image path/to/image.png --interval "x,x" --model saved_models/xxxxxx.joblib --mode 'svdn'

All SVD metrics you developed need :

  • Name added into metric_choices global array variable of generate_all_data.py file.
  • A specification of how you compute the metric into generate_data_svd method of generate_all_data.py file.
  • A prediction script into metrics_predictions folder. Name need to follow this rule : predict_noisy_image_svd_xxxx.py

Predict scene using model

Now we have a model trained, we can use it with an image as input :

python prediction_scene.py --data path/to/xxxx.csv --model saved_model/xxxx.joblib --output xxxxx --scene xxxx

Remark : scene parameter expected need to be the correct name of the Scene.

Others scripts

Test model on all scene data

In order to see if a model well generalized, a bash script is available :

bash testModelByScene.sh '100' '110' 'saved_models/xxxx.joblib' 'svdne' 'lab'

Parameters list :

  • 1 : Begin of interval of data from SVD to use
  • 2 : End of interval of data from SVD to use
  • 3 : Model we want to test
  • 4 : Kind of data input used by trained model
  • 5 : Metric used by model

Get treshold map

Main objective of this project is to predict as well as a human the noise perception on a photo realistic image. Human threshold is available from training data. So a script was developed to give the predicted treshold from model and compare predicted treshold from the expected one.

python predict_seuil_expe.py --interval "x,x" --model 'saved_models/xxxx.joblib' --mode ["svd", "svdn", "svdne"] --metric ['lab', 'mscn', ...] --limit_detection xx

Parameters list :

  • model : mode file saved to use
  • interval : the interval of data you want to use from SVD vector.
  • mode : kind of data ['svd', 'svdn', 'svdne']; not normalize, normalize vector only and normalize together.
  • limit_detection : number of not noisy images found to stop and return threshold (integer).

Display model performance information

Another script was developed to display into Mardown format the performance of a model.

The content will be divised into two parts :

  • Predicted performance on all scenes
  • Treshold maps obtained from model on each scenes

The previous script need to already have ran to obtain and display treshold maps on this markdown file.

python save_model_result_in_md.py --interval "xx,xx" --model saved_models/xxxx.joblib --mode ["svd", "svdn", "svdne"] --metric ['lab', 'mscn'] 

Parameters list :

  • model : mode file saved to use
  • interval : the interval of data you want to use from SVD vector.
  • mode : kind of data ['svd', 'svdn', 'svdne']; not normalize, normalize vector only and normalize together.

Markdown file is saved using model name into models_info folder.

Others...

All others bash scripts are used to combine and run multiple model combinations...

How to contribute

This git project uses git-flow implementation. You are free to contribute to it.git