数字图像重着色和复制-移动伪造的检测

Jijina M.T, Litty Koshy, Gayathry.S. Warrier
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引用次数: 1

摘要

由于许多图像处理工具的可用性,可以非常容易和有效地生成欺诈图像。这些欺诈图像很难识别。在复制-移动伪造中,将图像的一部分复制并粘贴到同一图像的其他位置,以删除有意义的对象或带来实际不存在于图像中的附加信息。然而,图像再着色技术通常通过对比度增强和着色等各种机制来改变图像。在该方法中,复制移动伪造检测是基于图像的相似性,并利用阈值和轮廓技术找到伪造部分。重着色图像检测采用三层卷积神经网络输出重着色概率。随着图像伪造技术的快速发展,高效、准确的图像伪造检测的必要性也随之增加。在这里,该系统的重点是重新着色和复制移动伪造检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Recoloring and Copy-Move Forgery in Digital Images
Due to the availability of numerous image manipulation tools, fraud images can be generated very easily and effectively. These fraud images are quite difficult to recognize. A section of the image is copied and pasted at some other location on the same image in copy-move forgery to drop meaningful objects or to bring additional information which is not present actually in the image. Whereas, the image recoloring techniques normally change the images via a variety of mechanisms like contrast enhancement and colorization. In the proposed method, copy move forgery detection is based on similarities in the images and finding the forged part by using threshold and contouring techniques. Recolored image detection uses a convolution neural network with three layers which outputs the probability of recoloring. As the techniques for image forging are developing faster, the necessity of highly efficient and accurate image forgery detection also increases. Here, this proposed system focuses on both recoloring and copy-move forgery detection.
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