Predicting Movie Production Years through Facial Recognition of Actors with Machine Learning
Journal:
arXiv
Published Date:
Apr 1, 2025
Abstract
This study used machine learning algorithms to identify actors and extract
the age of actors from images taken randomly from movies. The use of images
taken from Arab movies includes challenges such as non-uniform lighting,
different and multiple poses for the actors and multiple elements with the
actor or a group of actors. Additionally, the use of make-up, wigs, beards, and
wearing different accessories and costumes made it difficult for the system to
identify the personality of the same actor. The Arab Actors Dataset-AAD
comprises 574 images sourced from various movies, encompassing both black and
white as well as color compositions. The images depict complete scenes or
fragments thereof. Multiple models were employed for feature extraction, and
diverse machine learning algorithms were utilized during the classification and
prediction stages to determine the most effective algorithm for handling such
image types. The study demonstrated the effectiveness of the Logistic
Regression model exhibited the best performance compared to other models in the
training phase, as evidenced by its AUC, precision, CA and F1score values of
99%, 86%, 85.5% and 84.2% respectively. The findings of this study can be used
to improve the precision and reliability of facial recognition technology for
various uses as with movies search services, movie suggestion algorithms, and
genre classification of movies.