Ahmed, S.R.Sonuc, E.Ahmed, M.R.Duru, A.D.2024-09-292024-09-292022978-166546835-0https://doi.org/10.1109/HORA55278.2022.9799858https://hdl.handle.net/20.500.14619/94324th International Congress on Human-Computer Interaction, Optimization and Robotic Applications, HORA 2022 -- 9 June 2022 through 11 June 2022 -- Ankara -- 180434Deep Learning (DL) is the most efficient technique to handle a wide range of challenging problems such as data analytics, diagnosing diseases, detecting anomalies, etc. The development of DL has raised some privacy, justice, and national security issues. Deepfake is a DL-based application that has been very popular in recent years and is one of the reasons for these problems. Deepfake technology can create fake images and videos that are difficult for humans to recognize as real or not. Therefore, it needs to be proposed some automated methods for devices to detect and evaluate threats. In another word, digital and visual media must maintain their integrity. A set of rules used for Deepfake and some methods to detect the content created by Deepfake have been proposed in the literature. This paper summarizes what we have in the critical discussion about the problems, opportunities, and prospects of Deepfake technology. We aim for this work to be an alternative guide to getting knowledge of Deepfake detection methods. First, we cover Deepfake history and Deepfake techniques. Then, we present how a better and more robust Deepfake detection method can be designed to deal with fake content. © 2022 IEEE.eninfo:eu-repo/semantics/openAccessAIauto-encodersDeep-fakesDLface exploitationforensicsgenerative adversarial networkreviewAnalysis Survey on Deepfake detection and Recognition with Convolutional Neural NetworksConference Object10.1109/HORA55278.2022.97998582-s2.0-85133976904N/A