Here, we release the database, evaluation protocol and code for the following paper:
If you are interested in our Database and Evaluation Protocol please visit our website.
We provide the code to calculate the accuracy for face recognition models on the XQLFW evaluation protocol.
- Download the database and evaluation protocol here
- Inference the images and save the embeddings and labels to a numpy file (*.npy) according to:
[[pair1_img1_embed, pair1_img2_embed, pair2_img1_embed, pair2_img2_embed, ...], [True, True, False, ...]]
- Run the evaluate.py code with
--source_embedding
argument containing the absolute path to a directory containing your embedding .npy files:python evaluate.py --source_embeddings="path/to/your/folder" --csv --save
- Use the flag
--csv
if you want to get the results displayed in csv instead of a table. - Use the flag
--save
to save the results into the source_embedding directory.
- Use the flag
- See the results and enjoy!
If you use our code please consider citing:
@inproceedings{knoche2021xqlfw,
author={Knoche, Martin and Hoermann, Stefan and Rigoll, Gerhard},
booktitle={2021 16th IEEE International Conference on Automatic Face and Gesture Recognition (FG 2021)},
title={Cross-Quality LFW: A Database for Analyzing Cross- Resolution Image Face Recognition in Unconstrained Environments},
year={2021},
volume={},
number={},
pages={1-5},
doi={10.1109/FG52635.2021.9666960}
}
and maybe also:
@TechReport{LFWTech,
author={Gary B. Huang and Manu Ramesh and Tamara Berg
and Erik Learned-Miller},
title={Labeled Faces in the Wild: A Database for Studying
Face Recognition in Unconstrained Environments},
institution={University of Massachusetts, Amherst},
year={2007},
number={07-49},
month={October}
}
@TechReport{LFWTechUpdate,
author={Huang, Gary B and Learned-Miller, Erik},
title={Labeled Faces in the Wild: Updates and New
Reporting Procedures},
institution={University of Massachusetts, Amherst},
year={2014},
number={UM-CS-2014-003},
month={May}
}
For any inquiries, please open an issue on GitHub or send an E-Mail to: Martin.Knoche@tum.de