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Proceedings ArticleDOI

Detecting GANs and Retouching Based Digital Alterations via DAD-HCNN

TLDR
A hierarchical approach termed as DAD-HCNN which performs two-fold task: it differentiates between digitally generated images and digitally retouched images from the original unaltered images, and to increase the explainability of the decision, it also identifies the GAN architecture used to create the image.
Abstract
While image generation and editing technologies such as Generative Adversarial Networks and Photoshop are being used for creative and positive applications, the misuse of these technologies to create negative applications including Deep-nude and fake news is also increasing at a rampant pace. Therefore, detecting digitally created and digitally altered images is of paramount importance. This paper proposes a hierarchical approach termed as DAD-HCNN which performs two-fold task: (i) it differentiates between digitally generated images and digitally retouched images from the original unaltered images, and (ii) to increase the explainability of the decision, it also identifies the GAN architecture used to create the image. The effectiveness of the model is demonstrated on a database generated by combining face images generated from four different GAN architectures along with the retouched images and original images from existing benchmark databases.

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Journal ArticleDOI

DeepFakes and Beyond: A Survey of Face Manipulation and Fake Detection

TL;DR: This survey provides a thorough review of techniques for manipulating face images including DeepFake methods, and methods to detect such manipulations, with special attention to the latest generation of DeepFakes.
Journal ArticleDOI

MIPGAN—Generating Strong and High Quality Morphing Attacks Using Identity Prior Driven GAN

TL;DR: The proposed MIPGAN is derived from the StyleGAN with a newly formulated loss function exploiting perceptual quality and identity factor to generate a high quality morphed facial image with minimal artefacts and with high resolution.
Journal ArticleDOI

Fighting Deepfake by Exposing the Convolutional Traces on Images

TL;DR: A new approach aimed to extract a Deepfake fingerprint from images is proposed, based on the Expectation-Maximization algorithm trained to detect and extract a fingerprint that represents the Convolutional Traces left by GANs during image generation.
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DeepFakes and Beyond: A Survey of Face Manipulation and Fake Detection

TL;DR: In this paper, the authors provide a thorough review of techniques for manipulating face images including DeepFake methods, and methods to detect such manipulations, including entire face synthesis, identity swap (DeepFakes), attribute manipulation and expression swap.
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Detection, Attribution and Localization of GAN Generated Images

TL;DR: A novel approach to detect, attribute and localize GAN generated images that combines image features with deep learning methods is proposed.
References
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Journal ArticleDOI

Synthesizing Obama: learning lip sync from audio

TL;DR: Given audio of President Barack Obama, a high quality video of him speaking with accurate lip sync is synthesized, composited into a target video clip, and a recurrent neural network learns the mapping from raw audio features to mouth shapes to produce photorealistic results.
Proceedings Article

Exposing DeepFake Videos By Detecting Face Warping Artifacts

TL;DR: A new deep learning based method that can effectively distinguish AI-generated fake videos from real videos is described, which saves a plenty of time and resources in training data collection and is more robust compared to others.
Posted Content

DeepFakes: a New Threat to Face Recognition? Assessment and Detection

TL;DR: This paper presents the first publicly available set of Deepfake videos generated from videos of VidTIMIT database, and demonstrates that GAN-generated Deep fake videos are challenging for both face recognition systems and existing detection methods.
Proceedings ArticleDOI

Deepfake Video Detection through Optical Flow Based CNN

TL;DR: A new forensic technique able to discern between fake and original video sequences is given; unlike other state-of-the-art methods which resorts at single video frames, this work proposes the adoption of optical flow fields to exploit possible inter-frame dissimilarities.
Posted Content

Exposing DeepFake Videos By Detecting Face Warping Artifacts

TL;DR: In this paper, a new deep learning based method was proposed to distinguish AI-generated fake videos (referred to as "DeepFake") from real videos by using affine face warping as the distinctive feature to distinguish real and fake images.
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