What makes fake images detectable? Understanding properties that generalize

08/24/2020
by   Lucy Chai, et al.
41

The quality of image generation and manipulation is reaching impressive levels, making it increasingly difficult for a human to distinguish between what is real and what is fake. However, deep networks can still pick up on the subtle artifacts in these doctored images. We seek to understand what properties of fake images make them detectable and identify what generalizes across different model architectures, datasets, and variations in training. We use a patch-based classifier with limited receptive fields to visualize which regions of fake images are more easily detectable. We further show a technique to exaggerate these detectable properties and demonstrate that, even when the image generator is adversarially finetuned against a fake image classifier, it is still imperfect and leaves detectable artifacts in certain image patches. Code is available at https://chail.github.io/patch-forensics/.

READ FULL TEXT

page 10

page 11

page 12

page 28

research
12/01/2020

CycleGAN without checkerboard artifacts for counter-forensics of fake-image detection

In this paper, we propose a novel CycleGAN without checkerboard artifact...
research
06/13/2020

FakePolisher: Making DeepFakes More Detection-Evasive by Shallow Reconstruction

The recently rapid advances of generative adversarial networks (GANs) in...
research
02/02/2021

Fake-image detection with Robust Hashing

In this paper, we investigate whether robust hashing has a possibility t...
research
04/10/2023

Deepfake Detection of Occluded Images Using a Patch-based Approach

DeepFake involves the use of deep learning and artificial intelligence t...
research
12/19/2020

Identifying Invariant Texture Violation for Robust Deepfake Detection

Existing deepfake detection methods have reported promising in-distribut...
research
12/06/2018

ForensicTransfer: Weakly-supervised Domain Adaptation for Forgery Detection

Distinguishing fakes from real images is becoming increasingly difficult...
research
07/02/2017

Variance Regularizing Adversarial Learning

We introduce a novel approach for training adversarial models by replaci...

Please sign up or login with your details

Forgot password? Click here to reset