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Super-Resolution for Face Recognition Improvement

Repository based on:

Data

If you want to reproduce work with datasets:

  1. Download and place data in corresponding directories
  2. And run dataset_preparing.ipynb

Weights for LightCNN -> data/weights/light_cnn

Train

Trained on MS-Celeb-1M dataset. You can reproduce train pipeline using srgan_training.ipynb

Results

All approaches tested on LWF 6000 pairs.

ROC AUC
Real HR 0.98207
SRGAN with Light CNN 9 (MFM4) NO ADVERSARIAL 0.96832
SRGAN with Light CNN 9 (MFM4) 0.96742
SRGAN with Light CNN 9 (FC) NO ADVERSARIAL 0.96594
SRGAN with LIGHT CNN 9 (MFM4) NO ADVERSARIAL NO IMAGE 0.96421
SRGAN with VGG (3.1) 0.96349
SRGAN with VGG (3.1) NO ADVERSARIAL 0.96346
SRGAN with MSE 0.95951
Bicubic interpolation 0.93559

You can reproduce results using recognition_test.ipynb