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Score-based Face Quality Assessment (FQA)

Implementation of this paper in Python - OpenCv

Important

  • This implementaion is not complete yet.
  • Main file name is fqa_score.py and you can go to the fqa directory to access codes.
  • You should download this file and extract it in fqa directory

FQA score

This script will train a stacked auto encoders on 4 kind of features:

  • GIST (I don't know it's abbreviation)
  • CNN (Transfer Learning)
  • HOG (Histogram of graident)
  • LBP(local binary pattern)

You should install gist from here based on your OS full instruction are availble in link

It uses lfw Dataset for average quality pics, FERRET dataset for good pictures and False positive faces from face detection programs (like retina) labeled as bad pics.

Scenario

We have 3 classes of pics. good, average and bad pictures are available in 'pics' directory. we extact every feature for thease and use feature reduction (auto encoders) to downsize it to a vector of 50 elemnts. then concate all of the vectores ( 4 * 50 =200) and use feature reduction and auto encoders and a softmax layer for classifying images.

Sample mages

Original Cropped Local Binary pattern Histogeram of Oriented Gradients
alt text alt text alt text alt text

Performance

Our bottle neck is feature calculation. we should use a trained auto encoder for feature reduction (after we tuned it).

Attention

Need to make 'pics' folder if it's not available

TODO

  • Fine tune the auto encoders
  • Concatinate (late fusion) vectors
  • Train an auto encoder (with softmax) for classification
  • try V up architectures for auto encoding
  • gather more data for pics ( we already have about 1000 pics per class, but with FERRET data set that is a 'good' labled, we can extend our data set)

Aknwoledgements

Seyed Mohammad Amin Taheri at http:https://Shenasa-ai.ir during internship for any questions, don't hesitate to open and issue or contact me on: [email protected]