The code of HSEmotion Python Library is released under the Apache-2.0 License. There is no limitation for both academic and commercial usage.
python setup.py install
It is also possible to install it via pip:
pip install hsemotion
from hsemotion.facial_emotions import HSEmotionRecognizer
model_name='enet_b0_8_best_afew'
fer=HSEmotionRecognizer(model_name=model_name,device='cpu') # device is cpu or gpu
emotion,scores=fer.predict_emotions(face_img,logits=True)
The following values of model_name
parameter are supported:
- enet_b0_8_best_vgaf
- enet_b0_8_best_afew
- enet_b0_8_va_mtl
- enet_b2_8
- enet_b2_7
The method predict_emotions
returns both the string value of predicted emotions (Anger, Contempt, Disgust, Fear, Happiness, Neutral, Sadness, or Surprise) and scores at the output of the last layer.
If the logits
parameter is set to True
(by default), the logits are returned, otherwise, the posterior probabilities are estimated from the logits using softmax.
In addition, it is possible to extract visual embeddings for classifier learning
features=fer.extract_features(face_img)
The versions of these methods for a batch of images are also available
emotions,scores=fer.predict_multi_emotions(face_img_list,logits=False)
features=fer.extract_multi_features(face_img_list)
Complete usage example is available in the test_hsemotion_package.ipynb. It is necessary to run the following line to run the demo script:
run pip install facenet-pytorch
The details about training of the models are available in the main repository