A review of data preprocessing modules in digital image forensics methods using deep learning

Alexandre Berthet, J. Dugelay
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引用次数: 10

Abstract

Access to technologies like mobile phones contributes to the significant increase in the volume of digital visual data (images and videos). In addition, photo editing software is becoming increasingly powerful and easy to use. In some cases, these tools can be utilized to produce forgeries with the objective to change the semantic meaning of a photo or a video (e.g. fake news). Digital image forensics (DIF) includes two main objectives: the detection (and localization) of forgery and the identification of the origin of the acquisition (i.e. sensor identification). Since 2005, many classical methods for DIF have been designed, implemented and tested on several databases. Meantime, innovative approaches based on deep learning have emerged in other fields and have surpassed traditional techniques. In the context of DIF, deep learning methods mainly use convolutional neural networks (CNN) associated with significant preprocessing modules. This is an active domain and two possible ways to operate preprocessing have been studied: prior to the network or incorporated into it. None of the various studies on the digital image forensics provide a comprehensive overview of the preprocessing techniques used with deep learning methods. Therefore, the core objective of this article is to review the preprocessing modules associated with CNN models.
使用深度学习的数字图像取证方法中的数据预处理模块综述
移动电话等技术的使用有助于数字视觉数据(图像和视频)量的显著增加。此外,照片编辑软件正变得越来越强大和易于使用。在某些情况下,这些工具可以用来制作伪造的目的是改变照片或视频的语义(例如假新闻)。数字图像取证(DIF)包括两个主要目标:伪造的检测(和定位)和采集来源的识别(即传感器识别)。自2005年以来,已经在多个数据库上设计、实现和测试了许多经典的DIF方法。与此同时,基于深度学习的创新方法已经在其他领域出现,并超越了传统技术。在DIF背景下,深度学习方法主要使用卷积神经网络(CNN)与重要的预处理模块相关联。这是一个活跃的领域,已经研究了两种可能的操作预处理方法:在网络之前或并入网络。关于数字图像取证的各种研究都没有提供与深度学习方法一起使用的预处理技术的全面概述。因此,本文的核心目标是回顾与CNN模型相关的预处理模块。
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