几何攻击下基于结构匹配的图像认证

V. Monga, Divyanshu Vats, B. Evans
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引用次数: 47

摘要

几何攻击在图像认证中被认为是非常重要的。这是因为经典的基于水印和数字签名的方案容易受到几何图像处理,特别是局部几何攻击的攻击。在本文中,我们提出了一个使用显著特征点进行图像内容认证的通用框架。我们首先基于人类视觉系统的显式建模开发了一个迭代特征检测器。然后,我们通过开发广义豪斯多夫距离度量来比较两幅图像的特征。使用这样的距离度量对于方案的鲁棒性至关重要,并且可以解释先前提出的方法无法解决的特征检测器故障或遮挡问题。该算法可承受标准基准(例如Stirmark)攻击,包括压缩、常见信号处理操作、全局和局部几何变换,甚至难以模拟打印和扫描等扭曲。对图像数据的内容更改(恶意)操作也可以准确检测到
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Image Authentication Under Geometric Attacks Via Structure Matching
Surviving geometric attacks in image authentication is considered to be of great importance. This is because of the vulnerability of classical watermarking and digital signature based schemes to geometric image manipulations, particularly local geometric attacks. In this paper, we present a general framework for image content authentication using salient feature points. We first develop an iterative feature detector based on an explicit modeling of the human visual system. Then, we compare features from two images by developing a generalized Hausdorff distance measure. The use of such a distance measure is crucial to the robustness of the scheme, and accounts for feature detector failure or occlusion, which previously proposed methods do not address. The proposed algorithm withstands standard benchmark (e.g. Stirmark) attacks including compression, common signal processing operations, global as well as local geometric transformations, and even hard to model distortions such as print and scan. Content changing (malicious) manipulations of image data are also accurately detected
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