By Jia Guo and Jiankang Deng
The code of InsightFace is released under the MIT License.
2018.06.14
: There's a large scale Asian training dataset provided by Glint, see this discussion for detail.
2018.05.16
: A new training dataset released here which can easily achieve much better accuracy. See discussion for detail.
2018.04.23
: Our implementation of MobileFaceNet is now available. Please set --network y1
to use this lightweight but powerful backbone.
2018.03.26
: We can train with combined margin(loss-type=5), see Verification Results On Combined Margin.
2018.02.13
: We achieved state-of-the-art performance on MegaFace-Challenge. Please check our paper and code for implementation details.
- Introduction
- Training Data
- Train
- Pretrained Models
- Verification Results On Combined Margin
- Test on MegaFace
- 512-D Feature Embedding
- Third-party Re-implementation
In this repository, we provide training data, network settings and loss designs for deep face recognition. The training data includes the normalised MS1M and VGG2 datasets, which were already packed in the MxNet binary format. The network backbones include ResNet, InceptionResNet_v2, DenseNet, DPN and MobiletNet. The loss functions include Softmax, SphereFace, CosineFace, ArcFace and Triplet (Euclidean/Angular) Loss.
- loss-type=0: Softmax
- loss-type=1: SphereFace
- loss-type=2: CosineFace
- loss-type=4: ArcFace
- loss-type=5: Combined Margin
- loss-type=12: TripletLoss
Our method, ArcFace, was initially described in an arXiv technical report. By using this repository, you can simply achieve LFW 99.80%+ and Megaface 98%+ by a single model. This repository can help researcher/engineer to develop deep face recognition algorithms quickly by only two steps: download the binary dataset and run the training script.
All face images are aligned by MTCNN and cropped to 112x112:
- Refined-MS1M@BaiduDrive, Refined-MS1M@GoogleDrive
- VGGFace2@BaiduDrive, VGGFace2@GoogleDrive
- Please check src/data/face2rec2.py on how to build a binary face dataset. Any public available MTCNN can be used to align the faces, and the performance should not change. We will improve the face normalisation step by full pose alignment methods recently.
Note: If you use the refined MS1M dataset and the cropped VGG2 dataset, please cite the original papers.
- Install
MXNet
with GPU support (Python 2.7).
pip install mxnet-cu80
- Clone the InsightFace repository. We call the directory insightface as
INSIGHTFACE_ROOT
.
git clone --recursive https://github.com/deepinsight/insightface.git
- Download the training set (
MS1M
) and place it in$INSIGHTFACE_ROOT/datasets/
. Each training dataset includes following 7 files:
faces_ms1m_112x112/
train.idx
train.rec
property
lfw.bin
cfp_ff.bin
cfp_fp.bin
agedb_30.bin
The first three files are the training dataset while the last four files are verification sets.
- Train deep face recognition models.
In this part, we assume you are in the directory
$INSIGHTFACE_ROOT/src/
.
export MXNET_CPU_WORKER_NTHREADS=24
export MXNET_ENGINE_TYPE=ThreadedEnginePerDevice
We give some examples below. Our experiments were conducted on the Tesla P40 GPU.
(1). Train ArcFace with LResNet100E-IR.
CUDA_VISIBLE_DEVICES='0,1,2,3' python -u train_softmax.py --network r100 --loss-type 4 --margin-m 0.5 --data-dir ../datasets/faces_ms1m_112x112 --prefix ../model-r100
It will output verification results of LFW, CFP-FF, CFP-FP and AgeDB-30 every 2000 batches. You can check all command line options in train_softmax.py. This model can achieve LFW 99.80+ and MegaFace 98.0%+.
(2). Train CosineFace with LResNet50E-IR.
CUDA_VISIBLE_DEVICES='0,1,2,3' python -u train_softmax.py --network r50 --loss-type 2 --margin-m 0.35 --data-dir ../datasets/faces_ms1m_112x112 --prefix ../model-r50-amsoftmax
(3). Train Softmax with LMobileNetE.
CUDA_VISIBLE_DEVICES='0,1,2,3' python -u train_softmax.py --network m1 --loss-type 0 --data-dir ../datasets/faces_ms1m_112x112 --prefix ../model-m1-softmax
(4). Fine-turn the above Softmax model with Triplet loss.
CUDA_VISIBLE_DEVICES='0,1,2,3' python -u train_softmax.py --network m1 --loss-type 12 --lr 0.005 --mom 0.0 --per-batch-size 150 --data-dir ../datasets/faces_ms1m_112x112 --pretrained ../model-m1-softmax,50 --prefix ../model-m1-triplet
(5). Train LDPN107E network with Softmax loss on VGGFace2 dataset.
CUDA_VISIBLE_DEVICES='0,1,2,3,4,5,6,7' python -u train_softmax.py --network p107 --loss-type 0 --per-batch-size 64 --data-dir ../datasets/faces_vgg_112x112 --prefix ../model-p107-softmax
- Verification results.
LResNet100E-IR network trained on MS1M dataset with ArcFace loss:
Method | LFW(%) | CFP-FF(%) | CFP-FP(%) | AgeDB-30(%) |
---|---|---|---|---|
Ours | 99.80+ | 99.85+ | 94.0+ | 97.90+ |
LResNet50E-IR network trained on VGGFace2 dataset with ArcFace loss:
Method | LFW(%) | CFP-FF(%) | CFP-FP(%) | AgeDB-30(%) |
---|---|---|---|---|
Ours | 99.7+ | 99.6+ | 97.1+ | 95.7+ |
We report the verification accuracy after removing training set overlaps to strictly follow the evaluation metric. (C) means after cleaning
Dataset | Identities | Images | Identites(C) | Images(C) | Acc | Acc(C) |
---|---|---|---|---|---|---|
LFW | 85742 | 3850179 | 80995 | 3586128 | 99.83 | 99.81 |
CFP-FP | 85742 | 3850179 | 83706 | 3736338 | 94.04 | 94.03 |
AgeDB-30 | 85742 | 3850179 | 83775 | 3761329 | 98.08 | 97.87 |
You can use $INSIGHTFACE/src/eval/verification.py
to test all the pre-trained models.
- LResNet50E-IR@BaiduDrive, @GoogleDrive Performance:
Method | LFW(%) | CFP-FF(%) | CFP-FP(%) | AgeDB-30(%) | MegaFace(%) |
---|---|---|---|---|---|
Ours | 99.80 | 99.83 | 92.74 | 97.76 | 97.64 |
- LResNet34E-IR@BaiduDrive Performance:
Method | LFW(%) | CFP-FF(%) | CFP-FP(%) | AgeDB-30(%) | MegaFace(%) |
---|---|---|---|---|---|
Ours | 99.65 | 99.77 | 92.12 | 97.70 | 96.70 |
Caffe
LResNet50E-IR@BaiduDrive, converted by above MXNet model.
Performance:
Method | LFW(%) | CFP-FF(%) | CFP-FP(%) | AgeDB-30(%) | MegaFace1M(%) |
---|---|---|---|---|---|
Ours | 99.74 | -TBD- | -TBD- | -TBD- | -TBD- |
A combined margin method was proposed as a function of target logits value and original θ
:
COM(θ) = cos(m_1*θ+m_2) - m_3
For training with m1=0.9, m2=0.4, m3=0.15
, run following command:
CUDA_VISIBLE_DEVICES='0,1,2,3' python -u train_softmax.py --network r100 --loss-type 5 --margin-a 0.9 --margin-m 0.4 --margin-b 0.15 --data-dir ../datasets/faces_ms1m_112x112 --prefix ../model-r100
Method | m1 | m2 | m3 | LFW | CFP-FP | AgeDB-30 |
---|---|---|---|---|---|---|
W&F Norm Softmax | 1 | 0 | 0 | 99.28 | 88.50 | 95.13 |
SphereFace | 1.5 | 0 | 0 | 99.76 | 94.17 | 97.30 |
CosineFace | 1 | 0 | 0.35 | 99.80 | 94.4 | 97.91 |
ArcFace | 1 | 0.5 | 0 | 99.83 | 94.04 | 98.08 |
Combined Margin | 1.2 | 0.4 | 0 | 99.80 | 94.08 | 98.05 |
Combined Margin | 1.1 | 0 | 0.35 | 99.81 | 94.50 | 98.08 |
Combined Margin | 1 | 0.3 | 0.2 | 99.83 | 94.51 | 98.13 |
Combined Margin | 0.9 | 0.4 | 0.15 | 99.83 | 94.20 | 98.16 |
In this part, we assume you are in the directory $INSIGHTFACE_ROOT/src/megaface/
.
Note: We found there are overlap identities between facescrub dataset and Megaface distractors, which significantly affects the identification performance. This list is released under $INSIGHTFACE_ROOT/src/megaface/
.
- Align all face images of facescrub dataset and megaface distractors. Please check the alignment scripts under
$INSIGHTFACE_ROOT/src/align/
. - Generate feature files for both facescrub and megaface images.
python -u gen_megaface.py
- Remove Megaface noises which generates new feature files.
python -u remove_noises.py
- Run megaface development kit to produce final result.
In this part, we assume you are in the directory $INSIGHTFACE_ROOT/deploy/
. The input face image should be generally centre cropped. We use RNet+ONet of MTCNN to further align the image before sending it to the feature embedding network.
- Prepare a pre-trained model.
- Put the model under
$INSIGHTFACE_ROOT/models/
. For example,$INSIGHTFACE_ROOT/models/model-r34-amf
. - Run the test script
$INSIGHTFACE_ROOT/deploy/test.py
.
For single cropped face image(112x112), total inference time is only 17ms on our testing server(Intel E5-2660 @ 2.00GHz, Tesla M40, LResNet34E-IR).
- TensorFlow: InsightFace_TF
Todo
Todo
If you find InsightFace useful in your research, please consider to cite the following related papers:
@article{deng2018arcface,
title={ArcFace: Additive Angular Margin Loss for Deep Face Recognition},
author={Deng, Jiankang and Guo, Jia and Zafeiriou, Stefanos},
journal={arXiv:1801.07698},
year={2018}
}
[Jia Guo](guojia[at]gmail.com)
[Jiankang Deng](jiankangdeng[at]gmail.com)