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An Image Splicing and Copy-Move Detection Method Based on Convolutional Neural Networks with Global Average Pooling

机译:基于全局平均池卷积神经网络的图像拼接和复制移动检测方法

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Splicing and copy-move are two well-known methods of image tampering, while detection of image splicing and copy-move forgery is an important research topic in image forensics. In this paper, a method based on convolutional neural network with global average pooling was proposed for splicing and copy-move tampering detection. To detect image tampering, the inconsistency between the authentic images and the tampered images should be captured regardless of the image contents. So, the existing strategy using high-pass filter in SRM as initialization of the first layer was improved to reduce the influence of image content and make the features more diverse on each channel at the same time. In order to reduce the number of parameters in the fully connected layers and avoid overfitting, global average pooling was utilized before fully connected layers in the proposed model. Experiments on three public image tampering datasets demonstrated that the proposed method outperformed some state-of-the-art methods.
机译:拼接和复制移动是两种众所周知的图像篡改方法,而图像拼接和复印伪造的检测是图像取证中的重要研究主题。本文提出了一种基于具有全局平均池的卷积神经网络的方法,用于拼接和复制 - 移动篡改检测。为了检测图像篡改,不管图像内容如何捕获真实图像和篡改图像之间的不一致。因此,在SRM中使用高通滤波器作为第一层的初始化的现有策略得到了改进,以减少图像内容的影响,并使特征同时在每个通道上更多样化。为了减少完全连接层中的参数的数量并避免过度装备,在所提出的模型中的完全连接层之前使用全局平均池。三个公共图像篡改数据集的实验表明,所提出的方法优于一些最先进的方法。

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