Detection of Copy Move Forgery in Medical Images Using Deep Learning

M. Qadir, Samabia Tehsin, Sumaira Kausar
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Abstract

Since the advancements in technology and IT has revolutionized the world, digital images have come out with crucial importance. With the fruitful advancements and purposes, the authenticity and security breaches in digital images are simultaneously increasing because many editing software and tools give easy access to manipulate and temper the images, resulting in the change of complete information. Copy Move Forgery is the simplest way of tempering images in which an object is copied, removed, and replaced in the same image. As the medical field is too sensitive and even a minor manipulation can produce disastrous results, this study proposes an algorithm specifically designed to detect copy move forgery in medical images, especially when the world has gone towards telemedicine due to the outbreak of COVID-19. The proposed algorithm is based on CNN working on the whole image. The algorithm works in three phases, i.e., pre-processing, feature extraction, and classification. The proposed algorithm has given the accuracy of 89 percent on the dataset that has been created due to the publicly non-availability of forged medical images dataset. The dataset includes the images from abdominal, lungs, transverse view of lungs, chest abdominal, lungs transverse, lungs ap, vertebrae, and transverse heart.
基于深度学习的医学图像复制移动伪造检测
由于技术和信息技术的进步已经彻底改变了世界,数字图像已经出现了至关重要的意义。随着技术的不断进步和目的的不断提高,数字图像的真实性和安全性也在不断增加,因为许多编辑软件和工具可以很容易地对图像进行操纵和篡改,导致完整信息的变化。复制移动伪造是篡改图像最简单的方法,在同一图像中复制,删除和替换对象。由于医学领域过于敏感,即使是轻微的操作也会产生灾难性的结果,本研究提出了一种专门用于检测医学图像复制伪造的算法,特别是在全球因COVID-19爆发而走向远程医疗的情况下。该算法基于CNN对整个图像的处理。该算法分为预处理、特征提取和分类三个阶段。该算法在伪造医学图像数据集无法公开使用的情况下创建的数据集上,准确率达到89%。该数据集包括来自腹部、肺部、肺部横向视图、胸部腹部、肺部横向视图、肺部ap、椎骨和横向心脏的图像。
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