Skip to content

Latest commit

 

History

History
33 lines (25 loc) · 1.37 KB

File metadata and controls

33 lines (25 loc) · 1.37 KB

Face-Expression-Recognition-using-Deep-Learning

This project implements a convolutional neural network (CNN) to recognize facial expressions of seven different emotions: angry, disgust, fear, happy, neutral, sad, and surprise. The model is trained on the Face expression recognition dataset. Dataset E-link: https://www.kaggle.com/datasets/jonathanoheix/face-expression-recognition-dataset.

Requirements:- Python 3.11, keras~=2.12.0rc0, tensorflow, numpy~=1.23.5, matplotlib~=3.7.0, pandas~=1.5.3, seaborn, opencv-contrib-python==4.7.0.68

Installation:-

  1. First install the python.
  2. After installing python. Install the packages listed in the requirements.txt. Use the command pip install -r requirements.txt

Usage:-

  1. Clone or download the repository.
  2. Install the requirements
  3. Run the main.py script using the following command: python main.py
  4. The script will launch the webcam and start detecting emotions in real-time.

Files:-

  1. main.py: This file is the entry point of the application. It loads the trained model and uses it to predict the emotions of faces in real-time using a webcam.
  2. emotion_recognition_cnn.py: This file contains the Python code for building and training the CNN.
  3. HaarcascadeclassifierCascadeClassifier.xml: The pre-trained Haar Cascade Classifier for detecting faces in images.
  4. model.h5: The pre-trained Keras model for emotion detection.