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Deep Fusion Network for Splicing Forgery Localization

机译:拼接伪装本地化的深融合网络

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Digital splicing is a common type of image forgery: some regions of an image are replaced with contents from other images. To locate altered regions in a tampered picture is a challenging work because the difference is unknown between the altered regions and the original regions and it is thus necessary to search the large hypothesis space for a convincing result. In this paper, we proposed a novel deep fusion network to locate tampered area by tracing its border. A group of deep convolutional neural networks called Base-Net were firstly trained to response the certain type of splicing forgery respectively. Then, some layers of the Base-Net are selected and combined as a deep fusion neural network (Fusion-Net). After fine-tuning by a very small number of pictures, Fusion-Net is able to discern whether an image block is synthesized from different origins. Experiments on the benchmark datasets show that our method is effective in various situations and outperform state-of-the-art methods.
机译:数字拼接是一种常见的图像伪造类型:图像的某些区域被其他图像的内容替换。为了在篡改图片中定位改变的区域是一个具有挑战性的工作,因为在改变的区域和原始区域之间的差异是未知的,因此需要搜索令人信服的结果的大假设空间。在本文中,我们提出了一种新的深融网络来通过追踪其边界来定位篡改区域。首先培训了一组被称为基础净网络的深卷积神经网络,以响应某些类型的拼接伪造。然后,选择一些基网的层并将其作为深融性神经网络(Fusion-Net)组合。通过非常少量的图片进行微调后,Fusion-net能够辨别图像块是否从不同的起源中合成。基准数据集上的实验表明,我们的方法在各种情况下是有效的,优于最先进的方法。

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