Software for Multimodalty 2D+3D Facial Expression Recognition (FER) UI

Related tags

Deep Learningfer
Overview

EmotionUI

Software for Multimodalty 2D+3D Facial Expression Recognition (FER) UI.

demo screenshot

demo-ui

demo-happy

(with RealSense)

required packages

  • Python >= 3.6
  • numpy >= 1.19.5
  • Opencv-python >= 4.5
  • PySide6 >= 6.2.1
  • PyTorch >= 1.10
  • TorchVision >= 0.11

hardware

  1. usb camera
  2. Intel RealSense (optional for depth imaging)
  3. NV GPU (optional, CPU version also works)

loding weights

Two ways, try them, depending on your Internet speed.

  1. Manually download. Download vgg16 weights from:

    https://drive.google.com/file/d/1f-tKgovJ54l9xR3oIZ6gy77NdPirUddr/view?usp=sharing

    Then, move the weights to "./weights" folder, and rename it with "ui_weights.pth".

or

  1. Run script. Open terminal, run:
    > cd weights
    > python download_weights.py

train your own model

> cd train/dataset
> python main_train.py

Remember to move the new weights to "weights" folder, and rename it with "ui_weights.pth".

notice

The current FER network is vgg16 for simplicity. Current prediction is based on 2D result. One can easily change the network as you wish.

Owner
Yang Jiao
Yang Jiao
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