基于SIFT和GMM的复制移动伪造检测

N. Yadav, Rupal A. Kapdi
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引用次数: 5

摘要

修改或增强图像是无处不在的,但是,当增强倾向于改变图像的解释时,它们被称为数字图像伪造的企图。复制移动伪造(CMF)是一种简单的技术,在许多图像增强软件中有许多良好构建的工具。CMF检测技术往往倾向于在同一图像上建立复制和粘贴区域之间的相似性,因为两者都来自同一原始图像。关键点和基于块的技术被用来确定CMF。SIFT关键点与不同的技术相结合,可以准确地定位伪造。特征向量的高维是基于SIFT分析的瓶颈。我们提出了一种利用SIFT描述子检测CMF的方法,这些描述子使用GMM聚类,并对得到的可疑区域进行分割,从而加快分析速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Copy move forgery detection using SIFT and GMM
Modifying or enhancing an image is ubiquitous but, when enhancement tends to change the interpretation of the image they are termed as an attempt of forgery on digital images. Copy move forgery (CMF) is a simple technique and has a number of well built tools in a number of image enhancement software. CMF detection techniques often tend to establish similarity between copied and pasted region on the same image as both are from same original image. Keypoint and block based techniques are used to determine the CMF. SIFT keypoints are combined with different techniques to accurately localize forgery. High dimensionality of feature vector acts as a bottle neck in SIFT based analysis. We propose a method to detect CMF using SIFT descriptors which are clustered using GMM and segment the obtained suspect region speeding up the analysis.
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