Current developments in computer vision and deep learning allow to automatically generate hyper-realistic images, hardly distinguishable from real ones. In particular, human face generation achieved a stunning level of realism, opening new opportunities for the creative industry but, at the same time, new scary scenarios where such content can be maliciously misused. Therefore, it is essential to develop innovative methodologies to automatically tell apart real from computer generated multimedia, possibly able to follow the evolution and continuous improvement of data in terms of quality and realism. In the last few years, several deep learning-based solutions have been proposed for this problem, mostly based on Convolutional Neural Networks (CNNs). Although results are good in controlled conditions, it is not clear how such proposals can adapt to real-world scenarios, where learning needs to continuously evolve as new types of generated data appear. In this work, we tackle this proble...
Incremental learning for the detection and classification of GAN-generated images / Marra, Francesco; Saltori, Cristiano; Boato, Giulia; Verdoliva, Luisa. - (2019), pp. 1-6. ( 2019 IEEE International Workshop on Information Forensics and Security, WIFS 2019 Delft, Netherlands 9-12 Dec. 2019) [10.1109/WIFS47025.2019.9035099].
Incremental learning for the detection and classification of GAN-generated images
Saltori, Cristiano;Boato, Giulia;Verdoliva, Luisa
2019-01-01
Abstract
Current developments in computer vision and deep learning allow to automatically generate hyper-realistic images, hardly distinguishable from real ones. In particular, human face generation achieved a stunning level of realism, opening new opportunities for the creative industry but, at the same time, new scary scenarios where such content can be maliciously misused. Therefore, it is essential to develop innovative methodologies to automatically tell apart real from computer generated multimedia, possibly able to follow the evolution and continuous improvement of data in terms of quality and realism. In the last few years, several deep learning-based solutions have been proposed for this problem, mostly based on Convolutional Neural Networks (CNNs). Although results are good in controlled conditions, it is not clear how such proposals can adapt to real-world scenarios, where learning needs to continuously evolve as new types of generated data appear. In this work, we tackle this proble...I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



