August 27, 2019

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TreB1eN/InsightFace_Pytorch

TreB1eN/InsightFace_Pytorch

Pytorch0.4.1 codes for InsightFace

repo name TreB1eN/InsightFace_Pytorch
repo link https://github.com/TreB1eN/InsightFace_Pytorch
homepage
language Jupyter Notebook
size (curr.) 14696 kB
stars (curr.) 637
created 2018-07-30
license MIT License

InsightFace_Pytorch

Pytorch0.4.1 codes for InsightFace


1. Intro

  • This repo is a reimplementation of Arcface(paper), or Insightface(github)
  • For models, including the pytorch implementation of the backbone modules of Arcface and MobileFacenet
  • Codes for transform MXNET data records in Insightface(github) to Image Datafolders are provided
  • Pretrained models are posted, include the MobileFacenet and IR-SE50 in the original paper

2. Pretrained Models & Performance

IR-SE50 @ BaiduNetdisk, IR-SE50 @ Onedrive

LFW(%) CFP-FF(%) CFP-FP(%) AgeDB-30(%) calfw(%) cplfw(%) vgg2_fp(%)
0.9952 0.9962 0.9504 0.9622 0.9557 0.9107 0.9386

Mobilefacenet @ BaiduNetDisk, Mobilefacenet @ OneDrive

LFW(%) CFP-FF(%) CFP-FP(%) AgeDB-30(%) calfw(%) cplfw(%) vgg2_fp(%)
0.9918 0.9891 0.8986 0.9347 0.9402 0.866 0.9100

3. How to use

  • clone

    git clone https://github.com/TropComplique/mtcnn-pytorch.git
    

3.1 Data Preparation

3.1.1 Prepare Facebank (For testing over camera or video)

Provide the face images your want to detect in the data/face_bank folder, and guarantee it have a structure like following:

data/facebank/
        ---> id1/
            ---> id1_1.jpg
        ---> id2/
            ---> id2_1.jpg
        ---> id3/
            ---> id3_1.jpg
           ---> id3_2.jpg

3.1.2 download the pretrained model to work_space/model

If more than 1 image appears in one folder, an average embedding will be calculated

3.2.3 Prepare Dataset ( For training)

download the refined dataset: (emore recommended)

Note: If you use the refined MS1M dataset and the cropped VGG2 dataset, please cite the original papers.

  • after unzip the files to ‘data’ path, run :

    python prepare_data.py
    

    after the execution, you should find following structure:

faces_emore/
            ---> agedb_30
            ---> calfw
            ---> cfp_ff
            --->  cfp_fp
            ---> cfp_fp
            ---> cplfw
            --->imgs
            ---> lfw
            ---> vgg2_fp

3.2 detect over camera:

- facebank/
         name1/
             photo1.jpg
             photo2.jpg
             ...
         name2/
             photo1.jpg
             photo2.jpg
             ...
         .....
    if more than 1 image appears in the directory, average embedding will be calculated
  • 4 to start

    python face_verify.py 
    

3.3 detect over video:

​```
python infer_on_video.py -f [video file name] -s [save file name]
​```

the video file should be inside the data/face_bank folder

3.4 Training:

​```
python train.py -b [batch_size] -lr [learning rate] -e [epochs]

# python train.py -net mobilefacenet -b 200 -w 4
​```

4. References

PS

  • PRs are welcome, in case that I don’t have the resource to train some large models like the 100 and 151 layers model
  • Email : treb1en@qq.com
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