PyTorch implementation of Additive Angular Margin Loss for Deep Face Recognition. paper.
@article{deng2018arcface,
title={ArcFace: Additive Angular Margin Loss for Deep Face Recognition},
author={Deng, Jiankang and Guo, Jia and Niannan, Xue and Zafeiriou, Stefanos},
journal={arXiv:1801.07698},
year={2018}
}
- sgd with momentum
- margin-m = 0.6
- margin-s = 64.0
- batch size = 256
- input image is normalized with mean=[0.485, 0.456, 0.406] and std=[0.229, 0.224, 0.225]
Models | MegaFace | LFW | Download |
---|---|---|---|
SE-LResNet101E-IR | 98.06% | 99.80% | Link |
Function | Dataset |
---|---|
Train | MS-Celeb-1M |
Test | MegaFace |
MS-Celeb-1M dataset for training, 3,804,846 faces over 85,164 identities.
- Python 3.6.8
- PyTorch 1.3.0
Extract images, scan them, to get bounding boxes and landmarks:
$ python extract.py
$ python pre_process.py
Image alignment:
- Face detection(Retinaface mobilenet0.25).
- Face alignment(similar transformation).
- Central face selection.
- Resize -> 112x112.
Original | Aligned & Resized | Original | Aligned & Resized |
---|---|---|---|
$ python train.py
To visualize the training process:
$ tensorboard --logdir=runs
MegaFace dataset includes 1,027,060 faces, 690,572 identities.
Challenge 1 is taken to test our model with 1 million distractors.
- Download MegaFace and FaceScrub Images
- Download FaceScrub annotation files:
- facescrub_actors.txt
- facescrub_actresses.txt
- Download Linux DevKit from MagaFace WebSite then extract to megaface folder:
$ tar -vxf linux-devkit.tar.gz
- Align Megaface images:
$ python3 align_megaface.py
- Align FaceScrub images with annotations:
$ python3 align_facescrub.py
$ python3 megaface_eval.py
It does following things:
- Generate features for FaceScrub and MegaFace.
- Remove noises.
Note: we used the noises list proposed by InsightFace, at https://github.com/deepinsight/insightface. - Start MegaFace evaluation through devkit.
Draw curves with matlab script @ megaface/draw_curve.m.
CMC | ROC |
---|---|
Done matching! Score matrix size: 3359 966804 Saving to results/otherFiles/facescrub_megaface_0_1000000_1.bin Loaded 3359 probes spanning 80 classes Loading from results/otherFiles/facescrub_facescrub_0.bin Probe score matrix size: 3359 3359 distractor score matrix size: 3359 966804 Done loading. Time to compute some stats! Finding top distractors! Done sorting distractor scores Making gallery! Done Making Gallery! Allocating ranks (966884) Rank 1: 0.980616
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