- What is FMD&R?
- System Dependencies
- Quick Start
- How it Works
- Evaluation and Results
- Conclusions and future develop
- Credits
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Google Scraper:
Google scraper is a script that uses a special library to be able to download google images related to certain keywors. This library proved to be useful for obtaining further images of the reference actors for the purpose of creating a test dataset containing images different from those used in the training stage of the classifiers -
Wear Mask:
wear mask is a script useful for creating a dataset containing images of faces to which a facial mask has been affixed. This script proved to be very useful in order to train the classifier to recognize faces with the mask. it is based on the use of Dlib to be able to identify the facial points useful for identifying the coordinates where the mask should have been (nose, mouth and chin) -
Python 3 or higher (tested on 3.7) opencv-python~=4.2.0.34 dlib~=19.19.0 numpy~=1.18.2 Pillow~=7.1.1 Keras~=2.3.1 utils~=1.0.1 matplotlib~=3.2.1 seaborn~=0.10.1 scikit-learn~=0.22.2.post1 mtcnn~=0.1.0 face_recognition keras-vggface
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1 - Clone this repository
2 - Install all dependencies with "pip3 install -r requirements.txt"
3 - Download SysAgDatasets and SysAgModels from : https://drive.google.com/drive/folders/15BUd3s0lUbZjG_Ck8vrawa5sx94pSjAW?usp=sharing
4 - Execute "main.py"
5 - Enjoy with Face Mask D&R -
Project Presentation inside "/doc/Presentazione FMD&R.pptx"
This project trains a CNN to detect the presence of a face mask in a face image. CNN is trained on a dataset containing faces with and without a mask. The script is able to start via command line on images, videos and webcams
This project based on the pre-trained classifier VGG16 is able to fine-tune the images of the dataset containing only the faces of the actors, and make a prediction on which of the 5 actors it can be.
This project based on the pre-trained classifier VGG16 is able to fine-tune the images of the dataset containing only the eye line returned by MaskCropper.py. He is therefore able to recognize the identity of the image provided between one of the 5 masked actors used.
this script processes the images returned by WeraMask.py, subtracts the color of the face mask and identifies the cut point that separates the image into two sections: eye line section (useful for recognizing the subject) and the "artificial" mask section
Cropped EyeLine for Masked actors recognition
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Developed and Designed by:
FMD&R is an application developed for an "Agent Systems" exam
at University Aldo Moro of Bari Italy.
its goal is to detect face mask on images of faces and eventually recognize:
'Andrew Garfield', 'Angelina Jolie', 'Anthony Hopkins', 'Ben Affleck', 'Beyonce Knowles'
with or without face mask protections
FMD&R is able to recognize one of the five actors in the dataset starting from an image
of a face without or equipped with a face mask using only the eye area.
A possible future development could involve the use of more accurate techniques
for the recognition of the exposed face area such as the distance between the eyes
and the nose etc.
The MaskCropper script is based on the blue color range
(typical of the blue_masck.png used) which makes the crop on images with masks
of different color ineffective; to solve this problem, it would be possible to
identify the area of the image with greater concentration of color to more
precisely identify the "cut point" and obtain the eye area of the face.