This software recognizes person's faces and their corresponding emotions from a video or webcam feed. Powered by OpenCV, Dlib, face_recognition and Deep Learning.
- Opencv
- Cmake
- Dlib
- face_recognition
- Keras
Note : If you are facing issues installing dlib in your system then use google collab its comes as pre-installed.
test
folder contain images or video that we will feed to the model.images
folder contain only images of person face to perform face recognition.models
contain the pre-trained model for emotion classifier.emotion.py
can to run to classify emotions of person's face.face-rec-emotion.py
can recognise faces and classify emotion at a time.- face_recognition library uses the FaceNet Implementation for face recognition.For more details please visit here
python emotion.py
python face-rec-emotion.py
- Download the fer2013.tar.gz file from here
- Move the downloaded file to the datasets directory inside this repository.
- Untar the file:
tar -xzf fer2013.tar
- Download train_emotion_classifier.py from orriaga's repo here
- Run the train_emotion_classification.py file:
python train_emotion_classifier.py
The model used is from this research paper written by Octavio Arriaga, Paul G. Plöger, and Matias Valdenegro.
- Computer vision powered by OpenCV.
- Neural network scaffolding powered by Keras with Tensorflow.
- FaceNet Research Paper
- Convolutional Neural Network (CNN) deep learning architecture is from this research paper.
- Pretrained Keras model and much of the OpenCV code provided by GitHub user oarriaga.