Abstract

Techniques for creating and manipulating multimedia information have progressed to the point where they can now ensure a high degree of realism. DeepFake is a generative deep learning algorithm that creates or modifies face features in a superrealistic form, in which it is difficult to distinguish between real and fake features. This technology has greatly advanced and promotes a wide range of applications in TV channels, video game industries, and cinema, such as improving visual effects in movies, as well as a variety of criminal activities, such as misinformation generation by mimicking famous people. To identify and classify DeepFakes, research in DeepFake detection using deep neural networks (DNNs) has attracted increased interest. Basically, DeepFake is the regenerated media that is obtained by injecting or replacing some information within the DNN model. In this survey, we will summarize the DeepFake detection methods in face images and videos on the basis of their results, performance, methodology used and detection type. We will review the existing types of DeepFake creation techniques and sort them into five major categories. Generally, DeepFake models are trained on DeepFake datasets and tested with experiments. Moreover, we will summarize the available DeepFake dataset trends, focusing on their improvements. Additionally, the issue of how DeepFake detection aims to generate a generalized DeepFake detection model will be analyzed. Finally, the challenges related to DeepFake creation and detection will be discussed. We hope that the knowledge encompassed in this survey will accelerate the use of deep learning in face image and video DeepFake detection methods.

Highlights

  • F AKE document detection is not a new issue

  • The performance of Lipschitz regularization in the white box scenario only improves by 2.2 percent, and the deep image prior (DIP) method shows higher performance than that of Lipschitz regularization; the detection process is highly timeconsuming even after a high-performance configuration

  • Benefits and threats associated with DeepFake, GAN-based DeepFake applications

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Summary

Introduction

F AKE document detection is not a new issue. Rather, this issue has existed for quite some time. The process of legitimizing documents was confined to proofing, verification, and inquiry, and digital data had no significant role in this process. Digital data in different applications are evolving in such a way that they are fueling an uptick in cybercrime. In this context, the trend indicates serious vulnerabilities and a decrease in the trustworthiness of digital data. Discerning whether the acquired digital data are authentic or altered and legitimizing digital documents are currently major problems

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