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基于超BPD分割和深度卷积神经网络的图像复制-移动伪造检测与定位

Image copy-move forgery detection and localization based on super-BPD segmentation and DCNN.

作者信息

Li Qianwen, Wang Chengyou, Zhou Xiao, Qin Zhiliang

机构信息

School of Mechanical, Electrical and Information Engineering, Shandong University, Weihai, 264209, China.

Weihai Beiyang Electric Group Co. Ltd., Weihai, 264209, China.

出版信息

Sci Rep. 2022 Sep 2;12(1):14987. doi: 10.1038/s41598-022-19325-y.

Abstract

With the increasing importance of image information, image forgery seriously threatens the security of image content. Copy-move forgery detection (CMFD) is a greater challenge because its abnormality is smaller than other forgeries. To solve the problem that the detection results of the most image CMFD based on convolutional neural networks (CNN) have relatively low accuracy, an image copy-move forgery detection and localization based on super boundary-to-pixel direction (super-BPD) segmentation and deep CNN (DCNN) is proposed: SD-Net. Firstly, the segmentation technology is used to enhance the connection between the same or similar image blocks, improving the detection accuracy. Secondly, DCNN is used to extract image features, replacing conventional hand-crafted features with automatic learning features. The feature pyramid is used to improve the robustness to the scaling attack. Thirdly, the image BPD information is used to optimize the edges of rough detected image and obtain final detected image. The experiments proved that the SD-Net could detect and locate multiple, rotated, and scaling forgery well, especially large-level scaling forgery. Compared with other methods, the SD-Net is more accurately located and robust to various post-processing operations: brightness change, contrast adjustments, color reduction, image blurring, JPEG compression, and noise adding.

摘要

随着图像信息重要性的不断提高,图像伪造严重威胁着图像内容的安全。复制移动伪造检测(CMFD)是一个更大的挑战,因为其异常比其他伪造更小。为了解决基于卷积神经网络(CNN)的大多数图像CMFD检测结果准确率相对较低的问题,提出了一种基于超边界到像素方向(super-BPD)分割和深度CNN(DCNN)的图像复制移动伪造检测与定位方法:SD-Net。首先,利用分割技术增强相同或相似图像块之间的联系,提高检测准确率。其次,使用DCNN提取图像特征,用自动学习特征取代传统的手工特征。特征金字塔用于提高对缩放攻击的鲁棒性。第三,利用图像BPD信息优化粗略检测图像的边缘,得到最终检测图像。实验证明,SD-Net能够很好地检测和定位多种、旋转和缩放伪造,尤其是大级别缩放伪造。与其他方法相比,SD-Net定位更准确,对各种后处理操作(亮度变化、对比度调整、颜色还原、图像模糊、JPEG压缩和添加噪声)更具鲁棒性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9878/9440200/dde72ac92b11/41598_2022_19325_Fig1_HTML.jpg

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