Abstract

Traditionally, digital image forensics mainly focused on the low-level features of an image, such as edges and texture, because these features include traces of the image’s modification history. However, previous methods that employed low-level features are highly vulnerable, even to frequently used image processing techniques such as JPEG and resizing, because these techniques add noise to the low-level features. In this paper, we propose a framework that uses deep neural networks to detect image manipulation based on contextual abnormality. The proposed method first detects the class and location of objects using a well-known object detector such as a region-based convolutional neural network (R-CNN) and evaluates the contextual scores according to the combination of objects, the spatial context of objects and the position of objects. Thus, the proposed forensics can detect image forgery based on contextual abnormality as long as the object can be identified even if noise is applied to the image, contrary to methods that employ low-level features, which are vulnerable to noise. Our experiments showed that our method is able to effectively detect contextual abnormality in an image.

Highlights

  • Digital images have become one of the most popular information sources in the age of high-performance digital cameras and the Internet

  • We propose context-learning convolutional neural networks (CL-CNN) to learn the co-occurrence and spatial relationship between object categories

  • We used 65,268 multi-category images, which were divided into 80 categories, to train the CL-CNN

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Summary

Introduction

Digital images have become one of the most popular information sources in the age of high-performance digital cameras and the Internet. Images offer an effective and natural communication medium for humans, because the visual nature of images facilitates an effective understanding of the content. The integrity of visual data was accepted with confidence, such that a photographic image in a newspaper was commonly accepted as a certification of the news. Digital images are manipulated, especially since the advent of high-quality image-editing tools, such as Adobe Photoshop and Paintshop Pro. as a consequence of the invention of generative adversarial networks [1], deepfake technology has been posing a threat to the reality and integrity of image media [2] because this technology can generate photo-realistic fake images. Digital-image forensics, a practice aimed at identifying forgeries in digital images, has emerged as an important field of research

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