论文标题
振幅SAR图像拼接本地化
Amplitude SAR Imagery Splicing Localization
论文作者
论文摘要
合成孔径雷达(SAR)图像是多种任务的宝贵资产。在过去的几年中,许多网站一直以易于管理的产品的形式免费提供它们,从而有利于他们在SAR领域的广泛扩散和研究工作。这些机会的缺点是,这种图像可能会暴露于恶意用户的伪造和操纵中,从而引发了对其正直和可信度的新担忧。到目前为止,多媒体取证文献已经提出了各种技术来将操作定位在自然照片中,但是从未研究过SAR图像的完整性评估。此任务带来了新的挑战,因为SAR图像是通过与自然照片完全不同的处理链产生的。这意味着无法确保为自然图像开发的许多法医方法能够成功。在本文中,我们研究了振幅SAR图像剪接本地化的问题。我们的目标是将已从另一个图像复制和粘贴的振幅SAR图像的区域定位,并可能在此过程中进行某种编辑。为此,我们利用卷积神经网络(CNN)提取指纹突出显示分析输入的处理轨迹中的不一致之处。然后,我们检查了这种指纹,以产生二进制篡改面膜,指示剪接攻击下的像素区域。结果表明,我们所提出的方法是针对SAR信号的性质量身定制的,比为自然图像开发的最先进的法医工具提供了更好的性能。
Synthetic Aperture Radar (SAR) images are a valuable asset for a wide variety of tasks. In the last few years, many websites have been offering them for free in the form of easy to manage products, favoring their widespread diffusion and research work in the SAR field. The drawback of these opportunities is that such images might be exposed to forgeries and manipulations by malicious users, raising new concerns about their integrity and trustworthiness. Up to now, the multimedia forensics literature has proposed various techniques to localize manipulations in natural photographs, but the integrity assessment of SAR images was never investigated. This task poses new challenges, since SAR images are generated with a processing chain completely different from that of natural photographs. This implies that many forensics methods developed for natural images are not guaranteed to succeed. In this paper, we investigate the problem of amplitude SAR imagery splicing localization. Our goal is to localize regions of an amplitude SAR image that have been copied and pasted from another image, possibly undergoing some kind of editing in the process. To do so, we leverage a Convolutional Neural Network (CNN) to extract a fingerprint highlighting inconsistencies in the processing traces of the analyzed input. Then, we examine this fingerprint to produce a binary tampering mask indicating the pixel region under splicing attack. Results show that our proposed method, tailored to the nature of SAR signals, provides better performances than state-of-the-art forensic tools developed for natural images.