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 inside the
src
folder. -
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.
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.
-
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.
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.