基于补丁匹配的社交媒体图像复制移动伪造检测(CMFD)评估

Noor Atikah Mat Abir, Nor Bakiah Abd Warif, Nurezayana Zainal
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摘要

随着社会越来越依赖于技术和数字媒体,法律越来越依赖于数字取证来查找、保存、评估和分析数字证据,如数字图像和数字文件。不断改进的有效图像编辑应用程序允许用户毫不费力地更改图像材料或更改图像。复制-移动伪造(CMF)是一种非常难以检测的伪造形式。CMF涉及复制图像的一部分并将其粘贴到同一图像的一个或多个区域。然而,现有的复制-移动伪造检测(CMFD)方法仅用于现有的图像数据集,而社交媒体图像在当今的常见媒体上。在本文中,基于patchmatch的CMFD方法在不同的社交媒体图像平台:Facebook, WhatsApp和Twitter上进行了评估。对于现有的CMFD数据集,基于patchmatch的CMFD方法产生的平均性能为91%。通过将数据集替换为社交媒体图像数据集,平均性能略微下降到84%。
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An Evaluation of Patch Match-based Copy-Move Forgery Detection (CMFD) on Social Media Images
As society is ever more dependent on technology and digital media, the law depends more on digital forensics to find, keep, evaluate, and analyze digital evidence such as digital images and digital documents. The effective image editing application that constantly improves allows the user to change the image material or alter the image effortlessly. Copy-move forgery (CMF) is a very difficult form of forgery to detect. CMF involves copying part of an image and pasting it into one or more regions of the same image. However, the existing Copy-Move Forgery Detection (CMFD) method was only utilized on the existing image dataset, while social media images are on the common media today. In this paper, the PatchMatch-based CMFD method is evaluated with different platforms of social media images: Facebook, WhatsApp, and Twitter. The average performance generated by the PatchMatch-based CMFD method is 91% for the existing CMFD dataset. By replacing the dataset with the social media images dataset, the average performance slightly decreases to 84%.
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