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Facial-Expression-Recognition.Pytorch

A CNN based pytorch implementation on facial expression recognition (FER2013 and CK+), achieving 73.112% (state-of-the-art) in FER2013 and 94.64% in CK+ dataset

2021年4月10日15:33:17 更新

文档:Facial-Expression-Recognition.Pytorc... 链接:http://note.youdao.com/noteshare?id=0b97c224ba866d3cfc8911a3726cd33e&sub=9E9FD1BC60754F27A53085C55FDA737D

使用cpu

根据一位大佬的修改,我把他的代码抄到visualize_cpu.py 里面了,于是用下面这句话运行

python visualize_cpu.py --cpu

这位大佬(LittleWat )把代码改成可以cpu运行了

Demos

Image text Image text

Dependencies

文档:运行 WuJie1010_Facial-Expression-Rec... 链接:http://note.youdao.com/noteshare?id=dc290f5316d968af294bff094814c68b&sub=4D4656B3590B40F7921613D6E71EB700

  • Python 2.7
  • Pytorch >=0.2.0
  • h5py (Preprocessing)
  • sklearn (plot confusion matrix)

Visualize for a test image by a pre-trained model

FER2013 Dataset

Preprocessing Fer2013

  • first download the dataset(fer2013.csv) then put it in the "data" folder, then
  • python preprocess_fer2013.py

Train and Eval model

  • python mainpro_FER.py --model VGG19 --bs 128 --lr 0.01

plot confusion matrix

  • python plot_fer2013_confusion_matrix.py --model VGG19 --split PrivateTest

fer2013 Accurary

  • Model: VGG19 ; PublicTest_acc: 71.496% ; PrivateTest_acc:73.112%
  • Model: Resnet18 ; PublicTest_acc: 71.190% ; PrivateTest_acc:72.973%

CK+ Dataset

  • The CK+ dataset is an extension of the CK dataset. It contains 327 labeled facial videos, We extracted the last three frames from each sequence in the CK+ dataset, which contains a total of 981 facial expressions. we use 10-fold Cross validation in the experiment.

Train and Eval model for a fold

  • python mainpro_CK+.py --model VGG19 --bs 128 --lr 0.01 --fold 1

Train and Eval model for all 10 fold

  • python k_fold_train.py

plot confusion matrix for all fold

  • python plot_CK+_confusion_matrix.py --model VGG19

CK+ Accurary

  • Model: VGG19 ; Test_acc: 94.646%
  • Model: Resnet18 ; Test_acc: 94.040%