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Facial Expression Recognition

A deep learning and computer vision project to guess the state of emotion of humans based on facial expressions

  • Implemented using pytorch framework
  • used efficientnet-b0 architecture for CNN for training the model
  • Used cuda to decrease the training time per epoch from around 10 mins to under 1 min
  • Gained approx. 65% accuracy on test set
  • used OpenCV for reading and pre-processing images
  • randomly augmented the images by flipping and rotating images to increase test accuracy