FACE RECOGNITION USING SSD AND FACENET FOR SPBE AUTHENTICATION
The number of facial recognition models that have been developed makes many users free to choose the desired model. However, the large number of face recognition models will also raise questions about how effectively the model is used, especially when it is used to verify certain types of faces,...
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Main Author: | |
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/73939 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The number of facial recognition models that have been developed makes many
users free to choose the desired model. However, the large number of face
recognition models will also raise questions about how effectively the model is used,
especially when it is used to verify certain types of faces, for example Indonesian
faces. In this paper, the evaluation results of several face recognition models using
sample Indonesian faces are presented. The models evaluated were facenet based
on inception resnet v2 from the deepface library, VGGFace from the deepface
library, facenet based on inception resnet v1 from the keras-facenet library, and
the result of transfer learning keras-facenet into a siamese model. The face
detection model used in this paper is SSD.
The method used to carry out the evaluation is to compare the embedding results
of two Indonesian sample faces and evaluate the actual value and the predicted
result value of the model. This value is then used to calculate the confusion matrix
and the accuracy, precision, recall, and f1-score parameters will be calculated. The
results show that the keras – facenet model gets the best value with an accuracy of
96.51% with a precision of 100% in the dataset using euclidean threshold 0.75. The
calculated evaluation results can be used for one of the considerations in using the
face recognition models that have been mentioned. |
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