ARAÚJO, L. L.; http://lattes.cnpq.br/2093156188518982; ARAÚJO, Leo de Lima
Résumé:
Convolutional Neural Networks and other Deep Learning techniques have
become more relevant outperforming numerous classic applications in fields like
Computer Vision and Signal Processing. Therefore, this project proposes a study
covering those techniques in order to ascertain the viability of implementing them in
order to colorize grayscale images automatically, something that has been studied
by Computer Vision experts since the decade of 1980, and determine the most
efficient way of doing it. Three Convolutional Neural Network models, trained to
perform automatic colorization, were evaluated according utilizing the root mean
square error (RMSE), the peak signal-to-noise ratio (PSNR) and the structural
similarity index (SSIM) together with an user study, thus allowing the strengths
and weaknesses of each model to be determined. It was concluded that it is not only
possible to implement automatic colorization utilizing Deep Learning, but results
that are good enough to convince other people of the colorization’s authenticity can
be achieved.