Generative algorithms have been very successful in recent years. This phenomenon derives from the strong computational power that even consumer computers can provide. Moreover, a huge amount of data is available today for feeding deep learning algorithms. In this context, human 3D face mesh reconstruction is becoming an important but challenging topic in computer vision and computer graphics. It could be exploited in different application areas, from security to avatarization. This paper provides a 3D face reconstruction pipeline based on Generative Adversarial Networks (GANs). It can generate high-quality depth and correspondence maps from 2D images, which are exploited for producing a 3D model of the subject’s face.
FaceVision-GAN: A 3D Model Face Reconstruction Method from a Single Image Using GANs / Avola, Danilo; Cinque, Luigi; Foresti, Gian; Marini, Marco. - (2024), pp. 628-632. (Intervento presentato al convegno 13th International Conference on Pattern Recognition Applications and Methods, ICPRAM 2024 tenutosi a Rome, Italy) [10.5220/0012306200003654].
FaceVision-GAN: A 3D Model Face Reconstruction Method from a Single Image Using GANs
Avola, DaniloPrimo
Conceptualization
;Cinque, LuigiSecondo
Supervision
;Foresti, GianPenultimo
Supervision
;Marini, Marco
Ultimo
Writing – Original Draft Preparation
2024
Abstract
Generative algorithms have been very successful in recent years. This phenomenon derives from the strong computational power that even consumer computers can provide. Moreover, a huge amount of data is available today for feeding deep learning algorithms. In this context, human 3D face mesh reconstruction is becoming an important but challenging topic in computer vision and computer graphics. It could be exploited in different application areas, from security to avatarization. This paper provides a 3D face reconstruction pipeline based on Generative Adversarial Networks (GANs). It can generate high-quality depth and correspondence maps from 2D images, which are exploited for producing a 3D model of the subject’s face.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.