Skip to content

This project implements real-time facial emotion detection using the deepface library and OpenCV. It captures video from the webcam, detects faces, and predicts the emotions associated with each face. The emotion labels are displayed on the frames in real-time.

Notifications You must be signed in to change notification settings

shrimantasatpati/Facial-Emotion-Recognition-DeepFace-StreamLit

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

11 Commits
 
 
 
 
 
 

Repository files navigation

Facial-Emotion-Recognition-DeepFace-StreamLit

  • This project implements real-time facial emotion detection using the deepface library and OpenCV.
  • It captures video from the webcam, detects faces, and predicts the emotions associated with each face. The emotion labels are displayed on the frames in real-time.
  • to implement realtime emotion monitoring.
  • Created a streamLit application for the facial emotion recognition of human faces.
  • Give this repository a ⭐ if you liked it, since it took me time to understand and implement this
  • Made with ❤️ by Shrimanta Satpati

Dependencies

  • deepface: A deep learning facial analysis library that provides pre-trained models for facial emotion detection. It relies on TensorFlow for the underlying deep learning operations.
  • OpenCV: An open-source computer vision library used for image and video processing.

Usage

Initial steps:

  • Git clone this repository Run: git clone https://github.com/shrimantasatpati/Facial-Emotion-Recognition-DeepFace-StreamLit.git
  • Run: Facial-Emotion-Recognition-DeepFace-StreamLit
  1. Install the required dependencies:
    • You can use pip install -r requirements.txt
    • Or you can install dependencies individually:
      • pip install deepface
      • pip install opencv-python
  2. Run the code:
    • Execute the Python script.
    • The webcam will open, and real-time facial emotion detection will start.
    • Emotion labels will be displayed on the frames around detected faces. (Using the DeepFace extended models to predict age, emotions, gender and racial identity of the persons.)

StreamLit

  • Local Deployment on StreamLit framework. Screenshot (48) Screenshot (49) Screenshot (50)

About

This project implements real-time facial emotion detection using the deepface library and OpenCV. It captures video from the webcam, detects faces, and predicts the emotions associated with each face. The emotion labels are displayed on the frames in real-time.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages