基于模糊量的伪造图像高斯取证检测

Jae-Jeong Hwang, K. Rhee
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引用次数: 2

摘要

针对改变后的数字图像中的高斯取证检测(GFD)设计,本文提出了一个特征向量,该特征向量由高斯滤波的窗口大小定义为模糊量。准备了10种窗口大小,并分别通过高斯滤波计算其模糊量。在政府发展局的建议方案中,定义的10-dim。在SVM(支持向量机)分类器中训练图像的特征向量,用于伪造图像的高斯取证检测。在实验中,从分类的角度来看,改变后的图像与高斯滤波后的图像之间的曲线下测量面积(AUC)都在0.9以上。因此,提出的方法的等级评价被评为“优秀(A)”。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaussian Forensic Detection using Blur Quantity of Forgery Image
For a design of the Gaussian forensic detection (GFD) in the altered digital images, this paper presents a feature vector that is defined as a blurring quantity by the window size of the Gaussian filtering. The window size is prepared ten types, and their blur quantity is computed by the Gaussian filtering, respectively. In the proposed scheme of the GFD, the defined 10-dim. feature vector of the image is trained in a SVM (Support Vector Machine) classifier for the Gaussian forensic detection of the forged images. In the experiment, the measured area under the curves (AUC) are above 0.9 from a classification point of view between the altered and Gaussian filtered image. Thus, the grade evaluation of the proposed method is rated as "Excellent (A)."
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