JPEG Compression Detection Based on Edge-Corner Features Using SVM

Yongsoo Choi, Dongshik Kang, Jae-Jeong Hwang, K. Rhee
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引用次数: 4

Abstract

This paper focuses on the detection of JPEG compression (JC) image forensics and extracts a feature vector that composed of the Hough line, peaks, and the Harris-Stephens corner features to classify the JC and the other type images. The longest Hough line is computed by the Hough transform with the Canny line, then the coordinates of the line’s endpoints would be the feature set. Also, the coordinates of the deep Hough peaks is defined as the feature set. Lastly, the coordinates of the Harris-Stephens corners would be the feature set, respectively. They are to be combined the feature vector for the JC detection. The defined feature vector is trained inSVM (Support Vector Machine) classifier for the JC detection of the forged images. The performance of the proposed JC detection is measured with the chose four types of the forged images in the experiment: unaltered, median filtering (3 × 3), averaging filter (3 × 3) and downscaling (0.9), respectively. Subsequently, the experimental items; the AUC (Area Under Curve) by the sensitivity and 1-specificity, PTP at PFP = 0.01, Pe (a minimal average decision error), and the classification are evaluating the performance of the proposed JC detector scheme. Thus, it confirmed that the grade evaluation of the proposed algorithm is 'Excellent (A)'.
基于支持向量机边角特征的JPEG压缩检测
本文主要研究JPEG压缩(JC)图像的检测取证,提取由霍夫线、峰值和哈里斯-斯蒂芬斯角特征组成的特征向量,对JC和其他类型的图像进行分类。通过对Canny线进行Hough变换计算出最长的Hough线,然后将该线端点的坐标作为特征集。并将深霍夫峰的坐标定义为特征集。最后,Harris-Stephens角的坐标分别作为特征集。它们将被组合成JC检测的特征向量。定义的特征向量被训练成inSVM(支持向量机)分类器,用于伪造图像的JC检测。通过实验中选择的四种伪造图像:未改变、中值滤波(3 × 3)、平均滤波(3 × 3)和降尺度(0.9)来衡量所提出的JC检测的性能。随后,实验项目;曲线下面积(AUC)的灵敏度和1-特异性,PFP = 0.01时的PTP,最小平均决策误差(Pe),以及分类评估所提出的JC检测器方案的性能。因此,确定所提算法的等级评价为“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。
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