Tampering Detection and Localization Through Clustering of Camera-Based CNN Features

L. Bondi, S. Lameri, David Guera, Paolo Bestagini, E. Delp, S. Tubaro
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引用次数: 157

Abstract

Due to the rapid proliferation of image capturing devices and user-friendly editing software suites, image manipulation is at everyone's hand. For this reason, the forensic community has developed a series of techniques to determine image authenticity. In this paper, we propose an algorithm for image tampering detection and localization, leveraging characteristic footprints left on images by different camera models. The rationale behind our algorithm is that all pixels of pristine images should be detected as being shot with a single device. Conversely, if a picture is obtained through image composition, traces of multiple devices can be detected. The proposed algorithm exploits a convolutional neural network (CNN) to extract characteristic camera model features from image patches. These features are then analyzed by means of iterative clustering techniques in order to detect whether an image has been forged, and localize the alien region.
基于摄像机CNN特征聚类的篡改检测与定位
由于图像捕捉设备和用户友好的编辑软件套件的快速扩散,图像处理是在每个人的手中。为此,法医学界开发了一系列技术来确定图像的真实性。在本文中,我们提出了一种图像篡改检测和定位算法,利用不同相机型号在图像上留下的特征足迹。我们的算法背后的基本原理是,原始图像的所有像素都应该被检测为使用单个设备拍摄的。相反,如果通过图像合成获得图像,则可以检测到多个设备的痕迹。该算法利用卷积神经网络(CNN)从图像patch中提取相机模型特征。然后通过迭代聚类技术对这些特征进行分析,以检测图像是否被伪造,并定位外来区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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