School of Cyberspace, Hangzhou Dianzi University, Hangzhou 310018, China.
Institute of Cyberspace Research, Zhejiang University, Hangzhou 310027, China.
Sensors (Basel). 2020 Nov 21;20(22):6668. doi: 10.3390/s20226668.
Moving away from hand-crafted feature extraction, the use of data-driven convolution neural network (CNN)-based algorithms facilitates the realization of end-to-end automated forgery detection in multimedia forensics. On the basis of fingerprints acquired by images from different camera models, the goal of this paper is to design an effective detector capable of completing image forgery detection and localization. Specifically, relying on the designed constant high-pass filter, we first establish a well-performing CNN architecture to adaptively and automatically extract characteristics, and design a reliability fusion map (RFM) to improve localization resolution, and tamper detection accuracy. The extensive results from our empirical experiments demonstrate the effectiveness of our proposed RFM-based detector, and its better performance than other competing approaches.
从手工特征提取转向,使用基于数据驱动卷积神经网络(CNN)的算法有助于实现多媒体取证中端到端的自动伪造检测。本文基于来自不同相机模型的图像获取的指纹,旨在设计一种有效的检测器,能够完成图像伪造检测和定位。具体而言,依靠设计的恒定高通滤波器,我们首先建立一个性能良好的 CNN 架构,以自适应和自动提取特征,并设计一个可靠性融合图(RFM)来提高定位分辨率和篡改检测精度。我们的实证实验的广泛结果证明了我们提出的基于 RFM 的检测器的有效性,以及其比其他竞争方法更好的性能。