School of Computer Science and Cybersecurity, Communication University of China, Beijing 100024, China.
Key Laboratory of Convergent Media and Intelligent Technology (Communication University of China), Ministry of Education, China.
Math Biosci Eng. 2019 May 31;16(5):5022-5040. doi: 10.3934/mbe.2019253.
Resampling detection plays an important role in identifying image tampering, such as image splicing. Currently, the resampling detection is still difficult in recompressed images, which are yielded by applying resampling followed by post-JPEG compression to primary JPEG images. Except for the scenario of low quality primary compression, it remains rather challenging due to the widespread use of middle/high quality compression in imaging devices. In this paper, we propose a new convolution neural network (CNN) method to learn the resampling trace features directly from the recompressed images. To this end, a noise extraction layer based on low-order high pass filters is deployed to yield the image residual domain, which is more beneficial to extract manipulation trace features. A dual-stream CNN is presented to capture the resampling trails along different directions, where the horizontal and vertical network streams are interleaved and concatenated. Lastly, the learned features are fed into Sigmoid/Softmax layer, which acts as a binary/multiple classifier for achieving the blind detection and parameter estimation of resampling, respectively. Extensive experimental results demonstrate that our proposed method could detect resampling effectively in recompressed images and outperform the state-of-the-art detectors.
重采样检测在识别图像篡改(如图像拼接)中起着重要作用。目前,对于通过对原始 JPEG 图像进行重采样后再进行 JPEG 后压缩而产生的重压缩图像,重采样检测仍然很困难。除了低质量原始压缩的情况外,由于成像设备中广泛使用中/高质量压缩,这仍然是一个相当具有挑战性的问题。在本文中,我们提出了一种新的卷积神经网络(CNN)方法,从重压缩图像中直接学习重采样痕迹特征。为此,部署了一个基于低阶高通滤波器的噪声提取层,以产生图像残差域,这更有利于提取操作痕迹特征。提出了一种双流 CNN,用于捕获沿不同方向的重采样痕迹,其中水平和垂直网络流交错并串联。最后,将学习到的特征输入到 Sigmoid/Softmax 层,分别作为二进制/多分类器,用于实现重采样的盲检测和参数估计。大量实验结果表明,我们提出的方法可以有效地检测重压缩图像中的重采样,并优于最先进的检测器。