基于残差的局部描述子重铸卷积神经网络在图像伪造检测中的应用

D. Cozzolino, G. Poggi, L. Verdoliva
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引用次数: 272

摘要

基于图像噪声残差的局部描述符已被证明在许多法医应用中非常有效,如伪造检测和定位。尽管如此,在计算机视觉方面有希望的结果的激励下,研究界的重点现在正在转向深度学习。在本文中,我们证明了一类基于残差的描述子实际上可以看作是一个简单的约束卷积神经网络(CNN)。然后,通过放松约束,并在相对较小的训练集上对网络进行微调,我们获得了相对于传统检测器的显着性能改进。
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Recasting Residual-based Local Descriptors as Convolutional Neural Networks: an Application to Image Forgery Detection
Local descriptors based on the image noise residual have proven extremely effective for a number of forensic applications, like forgery detection and localization. Nonetheless, motivated by promising results in computer vision, the focus of the research community is now shifting on deep learning. In this paper we show that a class of residual-based descriptors can be actually regarded as a simple constrained convolutional neural network (CNN). Then, by relaxing the constraints, and fine-tuning the net on a relatively small training set, we obtain a significant performance improvement with respect to the conventional detector.
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