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A deep learning approach to patch-based image inpainting forensics

机译:基于补丁图像染色取证的深度学习方法

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摘要

Although image inpainting is now an effective image editing technique, limited work has been done for inpainting forensics. The main drawbacks of the conventional inpainting forensics methods lie in the difficulties on inpainting feature extraction and the very high computational cost. In this paper, we propose a novel approach based on a convolutional neural network (CNN) to detect patch-based inpainting operation. Specifically, the CNN is built following the encoder decoder network structure, which allows us to predict the inpainting probability for each pixel in an image. To guide the CNN to automatically learn the inpainting features, a label matrix is generated for the CNN training by assigning a class label for each pixel of an image, and the designed weighted cross-entropy serves as the loss function. They further help to strongly supervise the CNN to capture the manipulation information rather than the image content features. By the established CNN, inpainting forensics does not need to consider feature extraction and classifier design, and use any postprocessing as in conventional forensics methods. They are combined into the unique framework and optimized simultaneously. Experimental results show that the proposed method achieves superior performance in terms of true positive rate, false positive rate and the running time, as compared with state-of-the-art methods for inpainting forensics, and is very robust against JPEG compression and scaling manipulations.
机译:虽然图像染色现在是一种有效的图像编辑技术,但已经有限的作品为染色取证。传统的染色取证方法的主要缺点在于难以提取特征提取和非常高的计算成本的困难。在本文中,我们提出了一种基于卷积神经网络(CNN)的新方法来检测基于补丁的修复操作。具体地,CNN由编码器解码器网络结构之后构建,其允许我们预测图像中的每个像素的初始概率。为了引导CNN自动学习染色特征,通过为图像的每个像素分配类标签来为CNN训练生成标签矩阵,并且设计的加权交叉熵用作损耗功能。他们进一步帮助强制监督CNN以捕获操纵信息而不是图像内容特征。通过已建立的CNN,不需要考虑特征提取和分类器设计,并使用任何后处理,以与传统的取证方法一起使用。它们组合到独特的框架并同时优化。实验结果表明,该方法在真正的阳性速率,假阳性率和运行时间方面实现了卓越的性能,与原始方法相比,用于修复取证,对JPEG压缩和缩放操纵非常强大。

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