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Forgery image detection of Gaussian filtering by support vector machine using edge characteristics

机译:支持向量机使用边缘特性的高斯滤镜伪造图像检测

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For a design of the Gaussian filtering (GF) detection (GFD) in the tampered digital images, this paper presents three kinds of the new feature vector which are extracted from the edge ratios and the parameters of Hough peaks. In the proposed algorithm, the formed 10-dim. feature vector is trained in SVM (Support Vector Machine) for the GFD. In the experiment, the performance of the proposed GFD scheme is measured in GFw (window = {3 × 3, 5 × 5, compound (3 × 3, 5 × 5)}, σ= 0.5) images versus the median filtering (MF3: window = 3 × 3), the original (ORI), the average filtering (AVE3: window = 3 × 3), and the JPG90 (Quality Factor = 90) images, respectively. However, the measured performances of the AUC by the sensitivity (TP: True Positive rate) and 1-specificity (FP: False Positive rate) is above 0.9. Thus, it is confirmed that the grade evaluation of the proposed algorithm is rated as “Excellent (A)”.
机译:对于篡改数字图像中的高斯滤波(GF)检测(GFD)的设计,本文呈现了从边缘比和Hough峰的参数提取的三种新的特征向量。在所提出的算法中,形成的10-DIM。特征向量在GFD中的SVM(支持向量机)培训。在实验中,在GFW中测量所提出的GFD方案的性能(窗口= {3×3,5×5,化合物(3×3,5×5)},σ= 0.5)图像与中值滤波(MF3 :窗口= 3×3),原始(ORI),平均滤波(AVE3:窗口= 3×3),以及JPG90(质量因子= 90)图像。然而,通过灵敏度的测量AUC的性能(TP:真正的阳性率)和1特异性(FP:假率)高于0.9。因此,确认所提出的算法的等级评估被评定为“优秀(a)”。

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