Volume 13 - Issue 1
Architecture of a fake news detection system combining digital watermarking, signal processing, and machine learning
- David Megias
Internet Interdisciplinary Institute (IN3), Universitat Oberta de Catalunya, Barcelona, Spain, CYBERCAT-Center for Cybersecurity Research of Catalonia
dmegias@uoc.edu
- Minoru Kuribayashi
Okayama University, Okayama, Japan
kminoru@okayama-u.ac.jp
- Andrea Rosales
Internet Interdisciplinary Institute (IN3), Universitat Oberta de Catalunya, Barcelona, Spain
arosales@uoc.edu
- Krzysztof Cabaj
Warsaw University of Technology, Warsaw, Poland
krzysztof.cabaj@pw.edu.pl
- Wojciech Mazurczyk
Warsaw University of Technology, Warsaw, Poland
wojciech.mazurczyk@pw.edu.pl
Keywords: Fake news, digital watermarking, machine learning, signal processing, user experience study.
Abstract
In today’s world, the ease of creation and distribution of fake news is becoming an increasing threat
for individuals, companies, and institutions alike. Content spread over the Internet is able to create
an “alternative” reality and false accusations cannot be easily removed by later issued apologies as it
typically takes several years to unpick the labels pinned on by spreading disinformation. Currently,
the main facilitators of fake news distribution are social media networks, where a large volume of
digital media content is generated and exchanged every day. In this “flood” of information, it is quite
effortless to manipulate the content to impact its consumers. That is why developing effective countermeasures
is of prime importance. Considering the above, in this paper, we propose and describe an
architecture of the fake news detection system that is being developed within an ongoing Detection
of fake newS on SocIal MedIa pLAtfoRms (DISSIMILAR) project. It is designed for the protection
of digital media content, i.e., images, video, and audio, and to fulfill its goals, it combines digital
watermarking, signal processing, and machine learning techniques.