Robust Sequential DeepFake Detection
- URL: http://arxiv.org/abs/2309.14991v1
- Date: Tue, 26 Sep 2023 15:01:43 GMT
- Title: Robust Sequential DeepFake Detection
- Authors: Rui Shao, Tianxing Wu, Ziwei Liu
- Abstract summary: We propose a novel research problem called Detecting Sequential DeepFake Manipulation (Seq-DeepFake)
Unlike the existing deepfake detection task only demanding a binary label prediction, Seq-DeepFake requires correctly predicting a sequential vector of facial manipulation operations.
- Score: 46.493498963150294
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Since photorealistic faces can be readily generated by facial manipulation
technologies nowadays, potential malicious abuse of these technologies has
drawn great concerns. Numerous deepfake detection methods are thus proposed.
However, existing methods only focus on detecting one-step facial manipulation.
As the emergence of easy-accessible facial editing applications, people can
easily manipulate facial components using multi-step operations in a sequential
manner. This new threat requires us to detect a sequence of facial
manipulations, which is vital for both detecting deepfake media and recovering
original faces afterwards. Motivated by this observation, we emphasize the need
and propose a novel research problem called Detecting Sequential DeepFake
Manipulation (Seq-DeepFake). Unlike the existing deepfake detection task only
demanding a binary label prediction, detecting Seq-DeepFake manipulation
requires correctly predicting a sequential vector of facial manipulation
operations. To support a large-scale investigation, we construct the first
Seq-DeepFake dataset, where face images are manipulated sequentially with
corresponding annotations of sequential facial manipulation vectors. Based on
this new dataset, we cast detecting Seq-DeepFake manipulation as a specific
image-to-sequence task and propose a concise yet effective Seq-DeepFake
Transformer (SeqFakeFormer). To better reflect real-world deepfake data
distributions, we further apply various perturbations on the original
Seq-DeepFake dataset and construct the more challenging Sequential DeepFake
dataset with perturbations (Seq-DeepFake-P). To exploit deeper correlation
between images and sequences when facing Seq-DeepFake-P, a dedicated
Seq-DeepFake Transformer with Image-Sequence Reasoning (SeqFakeFormer++) is
devised, which builds stronger correspondence between image-sequence pairs for
more robust Seq-DeepFake detection.
Related papers
- Deepfake detection in videos with multiple faces using geometric-fakeness features [79.16635054977068]
Deepfakes of victims or public figures can be used by fraudsters for blackmailing, extorsion and financial fraud.
In our research we propose to use geometric-fakeness features (GFF) that characterize a dynamic degree of a face presence in a video.
We employ our approach to analyze videos with multiple faces that are simultaneously present in a video.
arXiv Detail & Related papers (2024-10-10T13:10:34Z) - Semantics-Oriented Multitask Learning for DeepFake Detection: A Joint Embedding Approach [77.65459419417533]
We propose an automatic dataset expansion technique to support semantics-oriented DeepFake detection tasks.
We also resort to joint embedding of face images and their corresponding labels for prediction.
Our method improves the generalizability of DeepFake detection and renders some degree of model interpretation by providing human-understandable explanations.
arXiv Detail & Related papers (2024-08-29T07:11:50Z) - DeepFidelity: Perceptual Forgery Fidelity Assessment for Deepfake
Detection [67.3143177137102]
Deepfake detection refers to detecting artificially generated or edited faces in images or videos.
We propose a novel Deepfake detection framework named DeepFidelity to adaptively distinguish real and fake faces.
arXiv Detail & Related papers (2023-12-07T07:19:45Z) - MMNet: Multi-Collaboration and Multi-Supervision Network for Sequential
Deepfake Detection [81.59191603867586]
Sequential deepfake detection aims to identify forged facial regions with the correct sequence for recovery.
The recovery of forged images requires knowledge of the manipulation model to implement inverse transformations.
We propose Multi-Collaboration and Multi-Supervision Network (MMNet) that handles various spatial scales and sequential permutations in forged face images.
arXiv Detail & Related papers (2023-07-06T02:32:08Z) - Detecting and Recovering Sequential DeepFake Manipulation [32.34908534582532]
We propose a novel research problem called Detecting Sequential DeepFake Manipulation (Seq-DeepFake)
Unlike the existing deepfake detection task only demanding a binary label prediction, Seq-DeepFake requires correctly predicting a sequential vector of facial manipulation operations.
We build a comprehensive benchmark and set up rigorous evaluation protocols and metrics for this new research problem.
arXiv Detail & Related papers (2022-07-05T17:59:33Z) - M2TR: Multi-modal Multi-scale Transformers for Deepfake Detection [74.19291916812921]
forged images generated by Deepfake techniques pose a serious threat to the trustworthiness of digital information.
In this paper, we aim to capture the subtle manipulation artifacts at different scales for Deepfake detection.
We introduce a high-quality Deepfake dataset, SR-DF, which consists of 4,000 DeepFake videos generated by state-of-the-art face swapping and facial reenactment methods.
arXiv Detail & Related papers (2021-04-20T05:43:44Z) - Improving DeepFake Detection Using Dynamic Face Augmentation [0.8793721044482612]
Most publicly available DeepFake detection datasets have limited variations.
Deep neural networks tend to overfit to the facial features instead of learning to detect manipulation features of DeepFake content.
We introduce Face-Cutout, a data augmentation method for training Convolutional Neural Networks (CNN) to improve DeepFake detection.
arXiv Detail & Related papers (2021-02-18T20:25:45Z) - Fighting Deepfake by Exposing the Convolutional Traces on Images [0.0]
Mobile apps like FACEAPP make use of the most advanced Generative Adversarial Networks (GAN) to produce extreme transformations on human face photos.
This kind of media object took the name of Deepfake and raised a new challenge in the multimedia forensics field: the Deepfake detection challenge.
In this paper, a new approach aimed to extract a Deepfake fingerprint from images is proposed.
arXiv Detail & Related papers (2020-08-07T08:49:23Z) - Fake face detection via adaptive manipulation traces extraction network [9.892936175042939]
We propose an adaptive manipulation traces extraction network (AMTEN) to suppress image content and highlight manipulation traces.
AMTEN exploits an adaptive convolution layer to predict manipulation traces in the image, which are reused in subsequent layers to maximize manipulation artifacts.
When detecting fake face images generated by various FIM techniques, AMTENnet achieves an average accuracy up to 98.52%, which outperforms the state-of-the-art works.
arXiv Detail & Related papers (2020-05-11T09:16:39Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.