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Characterization of splicing in digital images using gray scale co-occurrence matrices

机译:使用灰度共发生矩阵拼接数字图像中拼接的特征

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Image forgery has become the main concern of the society over the past years due to an increase in the number of fraudulent image manipulations. Therefore, it has become a necessity to build an effective forgery detection method to check the integrity and authenticity of images. In this paper, an unsupervised method for classification of forged images and a supervised method for localization of forged regions is proposed. The methods use GLCM, a textural feature descriptor that uses pixel correlation in image to extract features from it. Further, for feature matching, Euclidean and Hellinger distance is used and finally, the localization of tampered region is performed. Euclidean and Hellinger distance is calculated separately on each image for comparison of the results. The experimental results showed that Hellinger outperformed Euclidean distance in feature matching and gave better localization results. In another approach, a bounding box is taken from the image to get the testing area and the training area. SVM classifier is used for classification of forged blocks and the authentic blocks in the image. The experimentation is performed on CASIA v1.0 dataset.
机译:由于欺诈性图像操纵的数量增加,图像伪造已成为该社会的主要关注点。因此,它已成为构建有效的伪造检测方法来检查图像的完整性和真实性的必要性。在本文中,提出了一种伪造图像分类的无监督方法和用于锻造区域的定位的监督方法。该方法使用GLCM,一个纹理特征描述符,它使用图像中的像素相关来从中提取特征。此外,对于特征匹配,使用欧几里德和地狱距离,最后,执行篡改区域的定位。欧几里德和Hellinger距离在每个图像上单独计算以进行结果。实验结果表明,Hellinger在特征匹配中表现出欧几里德距离,并提供了更好的本地化结果。在另一种方法中,从图像中取出边界框以获得测试区域和训练区域。 SVM分类器用于伪造块的分类和图像中的真实块。实验在Casia V1.0数据集上进行。

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