School of Electronic Information Engineering, Tianjin University, Tianjin 300072, China; School of Computer and Information Engineering, Tianjin Chengjian University, Tianjin 300384, China.
Forensic Sci Int. 2013 Dec 10;233(1-3):158-66. doi: 10.1016/j.forsciint.2013.09.013. Epub 2013 Sep 18.
As powerful image editing tools are widely used, the demand for identifying the authenticity of an image is much increased. Copy-move forgery is one of the tampering techniques which are frequently used. Most existing techniques to expose this forgery need to improve the robustness for common post-processing operations and fail to precisely locate the tampering region especially when there are large similar or flat regions in the image. In this paper, a robust method based on DCT and SVD is proposed to detect this specific artifact. Firstly, the suspicious image is divided into fixed-size overlapping blocks and 2D-DCT is applied to each block, then the DCT coefficients are quantized by a quantization matrix to obtain a more robust representation of each block. Secondly, each quantized block is divided non-overlapping sub-blocks and SVD is applied to each sub-block, then features are extracted to reduce the dimension of each block using its largest singular value. Finally, the feature vectors are lexicographically sorted, and duplicated image blocks will be matched by predefined shift frequency threshold. Experiment results demonstrate that our proposed method can effectively detect multiple copy-move forgery and precisely locate the duplicated regions, even when an image was distorted by Gaussian blurring, AWGN, JPEG compression and their mixed operations.
随着功能强大的图像编辑工具的广泛使用,对图像真实性进行鉴别的需求也大大增加。复制-移动篡改是一种常用的篡改技术。大多数现有的暴露这种篡改的技术需要提高对常见后处理操作的鲁棒性,并且无法精确定位篡改区域,特别是在图像中有大的相似或平坦区域的情况下。在本文中,提出了一种基于 DCT 和 SVD 的鲁棒方法来检测这种特定的伪影。首先,将可疑图像分成固定大小的重叠块,并对每个块应用 2D-DCT,然后使用量化矩阵对 DCT 系数进行量化,以获得每个块更鲁棒的表示。其次,将每个量化块分成非重叠的子块,并对每个子块应用 SVD,然后提取特征以使用其最大奇异值降低每个块的维度。最后,按字典序对特征向量进行排序,并通过预定义的移位频率阈值匹配重复的图像块。实验结果表明,即使图像受到高斯模糊、加性高斯噪声、JPEG 压缩及其混合操作的干扰,我们提出的方法也可以有效地检测多个复制-移动篡改,并精确定位重复区域。