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A passive approach for the detection of splicing forgery in digital images

机译:一种检测数字图像拼接伪造的被动方法

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摘要

With the technology progress, a plethora of freely accessible software has questioned the authenticity of digital images. This field is continuously creating challenges for researchers to ascertain the integrity of images. Hence, there is a need to improve the performance of forgery detection algorithms from time to time. This paper is focused on the detection of splicing forgery because it is one of the most frequently used image manipulation techniques. In the proposed scheme, Markov features in both Discrete Wavelet Transform (DWT) and Local Binary Pattern (LBP) domains are extracted and combined for the detection of image splicing. Three-level DWT is applied to the source image by the means of discrete Haar wavelet. The image is split in to high and low-frequency sub-bands after applying one level DWT. Furthermore, low-frequency sub-band is decomposed twice to obtain three-level DWT, which leads to more information and less amount of noise. The efficacy of the proposed scheme has been appraised on six benchmark datasets i.e. CASIA v2.0, DVMM, IFS-TC, CASIA vl.O, Columbia, and DSO-1. Moreover, the SVM classifier is trained to classify the images as tampered or authentic. The effectiveness of the proposed scheme is evaluated based on various performance parameters such as accuracy, sensitivity, specificity, and informedness. The proposed results show improved accuracy i.e. 99.69%, 99.76%, 97.80%, 98.61%, 96.90%, and 92.50% on CASIA vl.O, CASIA v2.0, DVMM, Columbia, IFS-TC, and DSO-1, respectively, in comparison to other existing approaches.
机译:随着技术进步,夸张的自由无障碍软件质疑数字图像的真实性。该领域不断为研究人员创造挑战,以确定图像的完整性。因此,需要提高伪造检测算法的性能。本文专注于检测拼接伪造,因为它是最常用的图像操作技术之一。在所提出的方案中,提取离散小波变换(DWT)和局部二进制模式(LBP)域的马尔可夫特征,并组合用于检测图像拼接。通过离散HAAR小波的方式将三级DWT应用于源图像。在应用一个级别DWT后,图像被分成高频和低频子带。此外,低频子带分解两次以获得三级DWT,这导致更多信息和较少的噪声。拟议方案的效果已在六个基准数据集i.E.Casia V2.0,DVMM,IFS-TC,Casia VL.O,Columbia和DSO-1上进行了评估。此外,SVM分类器培训以将图像分类为篡改或真实的图像。基于各种性能参数,如准确性,敏感度,特异性和知情,评估所提出的方案的有效性。所提出的结果表明,Casia VL.O,Casia V2.0,DVMM,Columbia,IFS-TC和DSO-1的提高,即提高了99.69%,99.76%,98.61%,98.61%,96.90%和92.50%与其他现有方法相比。

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