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4.0 KiB

Computer vision
Preliminary
project
│   README.md
│   environment.yml
│
└───data
│   │   train.csv
│   │   test.csv
│   │   xxx.csv
│
└───results
│   │
|   |───model (free format)
│   │   │   my_own_model.pkl
│   │   │   my_own_model_architecture.txt
│   │   │   tensorboard.png
│   │   │   learning_curves.png
│   │   │   pre_trained_model.pkl (optional)
│   │   │   pre_trained_model_architecture.txt (optional)
│   │
|   |───hack_cnn (free format)
│   │   │   hacked_image.png   (optional)
│   │   │   input_image.png
│   │
|   |───preprocessing_test
|   |   |   input_video.mp4  (free format)
│   │   │   image0.png  (free format)
│   │   │   image1.png
│   │   │   imagen.png
│   │   │   image20.png
|
|───scripts
│   │   train.py
│   │   predict.py
│   │   preprocess.py
│   │   predict_live_stream.py
│   │   hack_the_cnn.py

Does the structure of the project is as below ?
Does the readme file summurize how to run the code and explain the global approach ?
Does the environment contain all libraries used and their versions that are necessary to run the code ?
Do the text files explain the chosen architectures ?
CNN emotion classifier
Is the model trained only the training set ?
Is the accuracy on the test set is higher than 70% ?
Do the learning curves prove the model the model is not overfitting ?
Has the training been stopped early enough to avoid the overfitting ?
Does the screenshot show the usage of the tensorboard to monitor the training ?
Does the text document explain why the architecture was chosen and what were the previous iterations ?
Does the following command python predict.py run without any error and returns an accuracy greater than 70% ?
```prompt
python predict.py

Accuracy on test set: 72%

```
Face detection on the video stream
Does the preprocessing pipeline take as input the webcam video stream of minimum 20 sec and save in a separate folder at least 20 preprocessed* images ?
Do all images contain a face ?
Are all images reshaped and centered on the face ?
Is the algorithm that detects the face imported via cv2 ?
Is the image converted to 48 x 48 grayscale pixels' image
Does the following command predict_live_stream.py run without any error and return the following ?
```prompt
python predict_live_stream.py

Reading video stream ...

Preprocessing ...
11:11:11s : Happy , 73%

Preprocessing ...
11:11:12s : Happy , 93%

Preprocessing ...
11:11:13s : Surprise , 71%

Preprocessing ...
11:11:14s : Neutral , 82%

...

Preprocessing ...
11:13:29s : Happy , 63%

```
Hack the CNN - guidelines:

The neural network trains by updating its weights given the training error. If an image is misclassfied the neural network changes its weight to classify it correctly. The trick is to keep the neural network's weights unchanged and to modify the input pixels in order to force the neural network to predict the wanted class. This part is validated if:

Choose an image from the database that gives more than 90% probability of Happy
Does the neural network modifies the input pixels to predict Sad ?
Can you recognize easily the chosen image ? The modified image is SLIGHTLY changed. It means that you recognies very easily the original image.

Here are three ressources that detail similar approaches: