-
Notifications
You must be signed in to change notification settings - Fork 0
ucsbieee/EmotionProject
Folders and files
Name | Name | Last commit message | Last commit date | |
---|---|---|---|---|
Repository files navigation
PROJECT: Deep Learning and GUI Development for Emotional Facial Recognition -- This the the readme file for the Emotion Detection Project -- -- This project was designed Austin Lynch for the purposes to UCSB's IEEE software project class -- ** HOW TO USE ** 1. Install Necessary librarys in Matlab listed below 2. Import the data excel file from following folder link: https://docs.google.com/spreadsheets/d/172ZCF12ufH1fADBiHSMoya5wh9Tsmn8P/edit?usp=sharing&ouid=109210790893542256917&rtpof=true&sd=true 2. Make sure to have face data excel file in current folder to build database 3. Construct database folders to store data images (* Note Folder Names Matter *) a. Have sub-folder in current folder names "database" b. Within this sub-folder have 7 different folders names: "Suprise", "Sad", "Neutral", "Happy", "Fear", "Disgust", "Angry" c. These folders should initially be empty 3. Run the Emotions.m code file to build and run the GUI 4. When the GUI is up a. First Build the Database by pressing the button. This will take around 2-3 minutes to build if not already. b. Second Train the Neural Network. A Training Plot will show up showing progress. This will take 2-3 minutes as well and network will be saved to current folder when done. c. You can now run the GUI with emotion detection now that the database is done and network trained and stored d. When done Reading face, press stop button the the program will stop ** NECESSARY MATLAB LIBRARYS FOR CODE TO RUN ** 1. Image Processing Toolbox 2. Deep Learning Toolbox 3. Matlab Support package for USB Webcams 4. Computer Vision Toolbox ** FILES ** - Emotion.m - This file Builds the GUI and hold call back functions for when buttons pressed. This is the main file of the project. - ClassifyFrame.m - This is a supporting file for Emotion.m that takes trained Neural network and image as inputs and returns the image with labeled bounding box and classification label from network. - TrainCNN.m - This is a supporting file for Emotion.m that builds the neural network and trains it if it is not already trained and saved or uploads the previously trained neural network file. ** FUNCTIONS ** - BuildDataBaseButtonPushed - This function is housed in Emotion.m and is a call back function for when the Build Database Button is pressed. It checks to see if the database is already built and if not is then read through the data base excel file and build the database of images to be used in the neural network. - TrainCNNButtonPushed - This function is housed in Emotion.m and is a call back function for when the TrainCNN Button is pressed. It first check to see if the network has been previously trained and saved and if not then it builds and Trains the network by calling on the function housed in TrainCNN.m - StartButtonPushed - This function is housed in Emotion.m and is a call back function for when the Start Button is pressed. It is connects to the built in webcam on the computer and snapshots a frame from this feed then uses the trained neural network classify it and output the results - StopButtonPushed - This function is housed in Emotion.m and is a call back function for when the Stop Button is pressed. It changes the stop indicator variabe to stop the looping of the frame capturing and classification in the start function and reset the GUI values.
About
This is the Code and Necessary Files for the Emotion Recognition Deep Learning Project
Resources
Stars
Watchers
Forks
Releases
No releases published
Packages 0
No packages published