SFD implement with pytorch

Overview

S³FD: Single Shot Scale-invariant Face Detector

A PyTorch Implementation of Single Shot Scale-invariant Face Detector

Description

Meanwhile train hand and head with S3FD,hand dataset is Egohands Dataset,head dataset is SCUT-HEAD,we can download hand model and face model

Requirement

  • pytorch 0.3
  • opencv
  • numpy
  • easydict

Prepare data

  1. download WIDER face dataset、Egohands dataset and SCUT-HEAD
  2. modify data/config.py
  3. python prepare_wider_data.py 4 python prepare_handataset.py

Train

We can choose different dataset to train different target[face,head,hand]

python train.py --batch_size 4 --dataset face\hand\head

Evalution

according to yourself dataset path,modify data/config.py

  1. Evaluate on AFW.
python afw_test.py
  1. Evaluate on FDDB
python fddb_test.py
  1. Evaluate on PASCAL face
python pascal_test.py
  1. test on WIDER FACE
python wider_test.py

Demo

you can test yourself image

python demo.py

Result

  1. AFW PASCAL FDDB
afw pascal fddb
AFW AP=99.81 paper=99.85 
PASCAL AP=98.77 paper=98.49
FDDB AP=0.975 paper=0.983
WIDER FACE:
Easy AP=0.925 paper = 0.927
Medium AP=0.925 paper = 0.924
Hard AP=0.854 paper = 0.852
  1. demo
afw

References

Owner
Jun Li
to be a different person
Jun Li
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