Image Copy-Move Forgery Detection Using Combination of Scale-Invariant Feature Transform and Local Binary Pattern Features

Marziye Shahrokhi, Alireza Akoushideh, A. Shahbahrami
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引用次数: 1

Abstract

Today, manipulating, storing, and sending digital images are simple and easy because of the development of digital imaging devices from hardware and software points of view. Digital images are used in different contexts of people’s lives such as news, forensics, and so on. Therefore, the reliability of received images is a question that often occupies the viewer’s mind and the authenticity of digital images is increasingly important. Detecting a forged image as a genuine one as well as detecting a genuine image as a forged one can sometimes have irreparable consequences. For example, an image that is available from the scene of a crime can lead to a wrong decision if it is detected incorrectly. In this paper, we propose a combination method to improve the accuracy of copy–move forgery detection (CMFD) reducing the false positive rate (FPR) based on texture attributes. The proposed method uses a combination of the scale-invariant feature transform (SIFT) and local binary pattern (LBP). Consideration of texture features around the keypoints detected by the SIFT algorithm can be effective to reduce the incorrect matches and improve the accuracy of CMFD. In addition, to find more and better keypoints some pre-processing methods have been proposed. This study was evaluated on the COVERAGE, GRIP, and MICC-F220 databases. Experimental results show that the proposed method without clustering or segmentation and only with simple matching operations, has been able to earn the true positive rates of 98.75%, 95.45%, and 87% on the GRIP, MICC-F220, and COVERAGE datasets, respectively. Also, the proposed method, with FPRs from 17.75% to 3.75% on the GRIP dataset, has been able to achieve the best results.
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结合尺度不变特征变换和局部二值模式特征的图像复制移动伪造检测
今天,由于从硬件和软件的角度来看,数字成像设备的发展,操作、存储和发送数字图像变得简单易行。数字图像用于人们生活的不同环境,如新闻、法医等。因此,接收图像的可靠性是一个经常占据观众脑海的问题,数字图像的真实性也越来越重要。将伪造图像检测为真实图像以及将真实图像检测为伪造图像有时会产生不可挽回的后果。例如,从犯罪现场获得的图像如果被错误地检测到,可能会导致错误的决策。本文提出了一种基于纹理属性降低误报率的组合方法来提高复制-移动伪造检测(CMFD)的准确性。该方法将尺度不变特征变换(SIFT)和局部二值模式(LBP)相结合。考虑SIFT算法检测到的关键点周围的纹理特征可以有效地减少错误匹配,提高CMFD的精度。此外,为了找到更多更好的关键点,本文还提出了一些预处理方法。本研究在COVERAGE、GRIP和mic - f220数据库上进行评估。实验结果表明,该方法在GRIP、mic - f220和COVERAGE数据集上的真阳性率分别为98.75%、95.45%和87%,不需要聚类和分割,只需要进行简单的匹配操作。该方法在GRIP数据集上的fpr为17.75% ~ 3.75%,达到了最佳效果。
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