SAVE THE DATE: EURASIP JIVP free Webinar on “GAN fingerprint for active detection/attribution of fake media” (2 Nov 2023)

We hope you can join us on Thursday, November 2nd at 12:30pm CET for our free next 1-hour webinar with Mauro Barni on “GAN fingerprint for active detection/attribution of fake media.”

Please RSVP here to join the webinar: https://cassyni.com/events/QAvzeaQK7azSjd5Fh57TgH?cb=functi
*If you wish to promote a EURASIP journal special issue, conference, event, or new image/video database at an upcoming webinar, please reply to this email with additional details.

Title: GAN fingerprint for active detection/attribution of fake media

Abstract: The continuous progress of generative models is fostering impressive advances in a variety of applications ranging from videoconferencing through virtual reality, passing from fast and seamingless creation of personalized media. At the same time, the availability of increasingly powerful tools for the generation of synthetic contents raises concerns about the possibility of distinguishing synthetic and genuine contents. Possible misuses of generative models, in fact, include the creation of fake media to support misinformation campaigns, defamation, polarization of public opinion and so on. For this reason, several multimedia forensic techniques have been developed to distinguish fake and real contents and trace back the manipulation history of any piece of media. However, such techniques fall short of keeping the pace of technological advancements, in addition they are not suitable to be applied in the wild even because they rely on subtle traces that are usually washed away by common processing tools (e.g. lossy compression). In this talk, I will advocate the use of active forensics techniques relying on the introduction within the to-be-authenticated content of a unique fingerprint (a.k.a. watermark). The fingerprint should be introduced within the media at creation time and should not be possible to remove it without degrading the hosting content in a significant way. In contrast to classical watermarking, here the fingerprint is embedded within the generative model, rather than directly in the generated content. In fact, to retain its effectiveness the generative models should still introduce a detectable fingerprint also in the presence of model finetuning, pruning and compression. In this webinar, I will outline the main challenges and opportunities associated to generative model fingerprinting and and describe some recent works of mine in this field.

Bio: Mauro Barni is full professor at the University of Siena, where he funded the Visual Information Processing and Protection group (VIPP) In the last two decades he has been studying the application of image and signal processing for security applications. His current research interests include multimedia forensics, adversarial machine learning and DNN watermarking, He published about 350 papers in international journals and conference proceedings. He has been the Editor in Chief of the IEEE Transactions on Information Forensics and Security for the years 2015-2017. He was the funding editor of the EURASIP Journal on Information Security. He has been the chairman of the IEEE Information Forensic and Security Technical Committee (IFS-TC. He was the technical program chair of ICASSP 2014. He was appointed DL of the IEEE SPS for the years 2013-2014. He is the recipient of the Individual Technical Achievement Award of EURASIP for 2016. He is a fellow member of the IEEE and the AAIA, and a member of EURASIP.


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