Skip to content

Real-time Facial Emotion Detection using deep learning

License

Notifications You must be signed in to change notification settings

ShrutiC-git/Emotion-detection

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

55 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Emotion detection using deep learning

Introduction

This project aims to classify the emotion on a person's face into one of seven categories, using deep convolutional neural networks. The model is trained on the FER-2013 dataset which was published on International Conference on Machine Learning (ICML). This dataset consists of 35887 grayscale, 48x48 sized face images with seven emotions - angry, disgusted, fearful, happy, neutral, sad and surprised.

Dependencies

  • Python 3, OpenCV, Tensorflow
  • To install the required packages, run pip install -r requirements.txt.

Basic Usage

The repository is currently compatible with tensorflow-2.0 and makes use of the Keras API using the tensorflow.keras library.

  • First, clone the repository and enter the folder
git clone https://github.com/atulapra/Emotion-detection.git
cd Emotion-detection
  • Download the FER-2013 dataset from here and unzip it inside the src folder. This will create the folder data.

  • If you want to train this model, use:

cd src
python emotions.py --mode train
  • If you want to view the predictions without training again, you can download the pre-trained model from here and then run:
cd src
python emotions.py --mode display
  • The folder structure is of the form:
    src:

    • data (folder)
    • emotions.py (file)
    • haarcascade_frontalface_default.xml (file)
    • model.h5 (file)
  • This implementation by default detects emotions on all faces in the webcam feed. With a simple 4-layer CNN, the test accuracy reached 63.2% in 50 epochs.

Accuracy plot

Data Preparation (optional)

  • The original FER2013 dataset in Kaggle is available as a single csv file. I had converted into a dataset of images in the PNG format for training/testing and provided this as the dataset in the previous section.

  • In case you are looking to experiment with new datasets, you may have to deal with data in the csv format. I have provided the code I wrote for data preprocessing in the dataset_prepare.py file which can be used for reference.

Algorithm

  • First, the haar cascade method is used to detect faces in each frame of the webcam feed.

  • The region of image containing the face is resized to 48x48 and is passed as input to the CNN.

  • The network outputs a list of softmax scores for the seven classes of emotions.

  • The emotion with maximum score is displayed on the screen.

Example Output

Mutiface

References

  • "Challenges in Representation Learning: A report on three machine learning contests." I Goodfellow, D Erhan, PL Carrier, A Courville, M Mirza, B Hamner, W Cukierski, Y Tang, DH Lee, Y Zhou, C Ramaiah, F Feng, R Li,
    X Wang, D Athanasakis, J Shawe-Taylor, M Milakov, J Park, R Ionescu, M Popescu, C Grozea, J Bergstra, J Xie, L Romaszko, B Xu, Z Chuang, and Y. Bengio. arXiv 2013.

About

Real-time Facial Emotion Detection using deep learning

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%