Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature Extractors
With the breakthrough of computer vision and deep learning, there has been a surge of realistic-looking fake face media manipulated by AI such as DeepFake or Face2Face that manipulate facial identities or expressions. The fake faces were mostly created for fun, but abuse has caused social unrest. Fo...
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doaj-9f9bea4de07d4e1a85ce1996340a5fd62021-09-14T23:00:21ZengIEEEIEEE Access2169-35362021-01-01912349312350310.1109/ACCESS.2021.31108599531572Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature ExtractorsEunji Kim0Sungzoon Cho1https://orcid.org/0000-0002-1695-1973School of Business Administration, Chung-Ang University, Dongjak-gu, Seoul, Republic of KoreaDepartment of Industrial Engineering, Seoul National University, Gwanak-gu, Seoul, Republic of KoreaWith the breakthrough of computer vision and deep learning, there has been a surge of realistic-looking fake face media manipulated by AI such as DeepFake or Face2Face that manipulate facial identities or expressions. The fake faces were mostly created for fun, but abuse has caused social unrest. For example, some celebrities have become victims of fake pornography made by DeepFake. There are also growing concerns about fake political speech videos created by Face2Face. To maintain individual privacy as well as social, political, and international security, it is imperative to develop models that detect fake faces in media. Previous research can be divided into general-purpose image forensics and face image forensics. While the former has been studied for several decades and focuses on extracting hand-crafted features of traces left in the image after manipulation, the latter is based on convolutional neural networks mainly inspired by object detection models specialized to extract images’ content features. This paper proposes a hybrid face forensics framework based on a convolutional neural network combining the two forensics approaches to enhance the manipulation detection performance. To validate the proposed framework, we used a public Face2Face dataset and a custom DeepFake dataset collected on our own. Experimental results using the two datasets showed that the proposed model is more accurate and robust at various video compression rates compared to the previous methods. Throughout class activation map visualization, the proposed framework provided information on which face parts are considered important and revealed the tempering traces invisible to naked eyes.https://ieeexplore.ieee.org/document/9531572/Convolutional neural networksDeepFakeFace2Facefake face detectionfake face image forensicsmulti-channel constrained convolution |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Eunji Kim Sungzoon Cho |
spellingShingle |
Eunji Kim Sungzoon Cho Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature Extractors IEEE Access Convolutional neural networks DeepFake Face2Face fake face detection fake face image forensics multi-channel constrained convolution |
author_facet |
Eunji Kim Sungzoon Cho |
author_sort |
Eunji Kim |
title |
Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature Extractors |
title_short |
Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature Extractors |
title_full |
Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature Extractors |
title_fullStr |
Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature Extractors |
title_full_unstemmed |
Exposing Fake Faces Through Deep Neural Networks Combining Content and Trace Feature Extractors |
title_sort |
exposing fake faces through deep neural networks combining content and trace feature extractors |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
With the breakthrough of computer vision and deep learning, there has been a surge of realistic-looking fake face media manipulated by AI such as DeepFake or Face2Face that manipulate facial identities or expressions. The fake faces were mostly created for fun, but abuse has caused social unrest. For example, some celebrities have become victims of fake pornography made by DeepFake. There are also growing concerns about fake political speech videos created by Face2Face. To maintain individual privacy as well as social, political, and international security, it is imperative to develop models that detect fake faces in media. Previous research can be divided into general-purpose image forensics and face image forensics. While the former has been studied for several decades and focuses on extracting hand-crafted features of traces left in the image after manipulation, the latter is based on convolutional neural networks mainly inspired by object detection models specialized to extract images’ content features. This paper proposes a hybrid face forensics framework based on a convolutional neural network combining the two forensics approaches to enhance the manipulation detection performance. To validate the proposed framework, we used a public Face2Face dataset and a custom DeepFake dataset collected on our own. Experimental results using the two datasets showed that the proposed model is more accurate and robust at various video compression rates compared to the previous methods. Throughout class activation map visualization, the proposed framework provided information on which face parts are considered important and revealed the tempering traces invisible to naked eyes. |
topic |
Convolutional neural networks DeepFake Face2Face fake face detection fake face image forensics multi-channel constrained convolution |
url |
https://ieeexplore.ieee.org/document/9531572/ |
work_keys_str_mv |
AT eunjikim exposingfakefacesthroughdeepneuralnetworkscombiningcontentandtracefeatureextractors AT sungzooncho exposingfakefacesthroughdeepneuralnetworkscombiningcontentandtracefeatureextractors |
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1717379525613977600 |