Deep Detection for Face Manipulation
- URL: http://arxiv.org/abs/2009.05934v1
- Date: Sun, 13 Sep 2020 06:48:34 GMT
- Title: Deep Detection for Face Manipulation
- Authors: Disheng Feng, Xuequan Lu, Xufeng Lin
- Abstract summary: We introduce a deep learning method to detect face manipulation.
It consists of two stages: feature extraction and binary classification.
We show that it generates better performance than state-of-the-art techniques in most cases.
- Score: 10.551455590390418
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: It has become increasingly challenging to distinguish real faces from their
visually realistic fake counterparts, due to the great advances of deep
learning based face manipulation techniques in recent years. In this paper, we
introduce a deep learning method to detect face manipulation. It consists of
two stages: feature extraction and binary classification. To better distinguish
fake faces from real faces, we resort to the triplet loss function in the first
stage. We then design a simple linear classification network to bridge the
learned contrastive features with the real/fake faces. Experimental results on
public benchmark datasets demonstrate the effectiveness of this method, and
show that it generates better performance than state-of-the-art techniques in
most cases.
Related papers
- UniForensics: Face Forgery Detection via General Facial Representation [60.5421627990707]
High-level semantic features are less susceptible to perturbations and not limited to forgery-specific artifacts, thus having stronger generalization.
We introduce UniForensics, a novel deepfake detection framework that leverages a transformer-based video network, with a meta-functional face classification for enriched facial representation.
arXiv Detail & Related papers (2024-07-26T20:51:54Z) - Semantic Contextualization of Face Forgery: A New Definition, Dataset, and Detection Method [77.65459419417533]
We put face forgery in a semantic context and define that computational methods that alter semantic face attributes are sources of face forgery.
We construct a large face forgery image dataset, where each image is associated with a set of labels organized in a hierarchical graph.
We propose a semantics-oriented face forgery detection method that captures label relations and prioritizes the primary task.
arXiv Detail & Related papers (2024-05-14T10:24:19Z) - FreqBlender: Enhancing DeepFake Detection by Blending Frequency Knowledge [52.63528223992634]
Existing methods typically generate synthetic fake faces by blending real or fake faces in spatial domain.
This paper introduces em FreqBlender, a new method that can generate pseudo-fake faces by blending frequency knowledge.
Experimental results demonstrate the effectiveness of our method in enhancing DeepFake detection, making it a potential plug-and-play strategy for other methods.
arXiv Detail & Related papers (2024-04-22T04:41:42Z) - Deepfake Detection of Occluded Images Using a Patch-based Approach [1.6114012813668928]
We present a deep learning approach using the entire face and face patches to distinguish real/fake images in the presence of obstruction.
For producing fake images, StyleGAN and StyleGAN2 are trained by FFHQ images and also StarGAN and PGGAN are trained by CelebA images.
The proposed approach reaches higher results in early epochs than other methods and increases the SoTA results by 0.4%-7.9% in the different built data-sets.
arXiv Detail & Related papers (2023-04-10T12:12:14Z) - A survey on facial image deblurring [3.6775758132528877]
When the facial image is blurred, it has a great impact on high-level vision tasks such as face recognition.
This paper surveys and summarizes recently published methods for facial image deblurring, most of which are based on deep learning.
We show the performance of classical methods on datasets and metrics and give a brief discussion on the differences of model-based and learning-based methods.
arXiv Detail & Related papers (2023-02-10T02:24:56Z) - Leveraging Real Talking Faces via Self-Supervision for Robust Forgery
Detection [112.96004727646115]
We develop a method to detect face-manipulated videos using real talking faces.
We show that our method achieves state-of-the-art performance on cross-manipulation generalisation and robustness experiments.
Our results suggest that leveraging natural and unlabelled videos is a promising direction for the development of more robust face forgery detectors.
arXiv Detail & Related papers (2022-01-18T17:14:54Z) - Robust Face-Swap Detection Based on 3D Facial Shape Information [59.32489266682952]
Face-swap images and videos have attracted more and more malicious attackers to discredit some key figures.
Previous pixel-level artifacts based detection techniques always focus on some unclear patterns but ignore some available semantic clues.
We propose a biometric information based method to fully exploit the appearance and shape feature for face-swap detection of key figures.
arXiv Detail & Related papers (2021-04-28T09:35:48Z) - DeepFake Detection Based on the Discrepancy Between the Face and its
Context [94.47879216590813]
We propose a method for detecting face swapping and other identity manipulations in single images.
Our approach involves two networks: (i) a face identification network that considers the face region bounded by a tight semantic segmentation, and (ii) a context recognition network that considers the face context.
We describe a method which uses the recognition signals from our two networks to detect such discrepancies.
Our method achieves state of the art results on the FaceForensics++, Celeb-DF-v2, and DFDC benchmarks for face manipulation detection, and even generalizes to detect fakes produced by unseen methods.
arXiv Detail & Related papers (2020-08-27T17:04:46Z) - One-Shot GAN Generated Fake Face Detection [3.3707422585608953]
We propose a universal One-Shot GAN generated fake face detection method.
The proposed method is based on extracting out-of-context objects from faces via scene understanding models.
Our experiments show that, we can discriminate fake faces from real ones in terms of out-of-context features.
arXiv Detail & Related papers (2020-03-27T05:51:14Z)
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.