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An Image Recapture Detection Algorithm Based on Learning Dictionaries of Edge Profiles

机译:基于学习边缘轮廓字典的图像重获检测算法

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摘要

With today’s digital camera technology, high-quality images can be recaptured from an liquid crystal display (LCD) monitor screen with relative ease. An attacker may choose to recapture a forged image in order to conceal imperfections and to increase its authenticity. In this paper, we address the problem of detecting images recaptured from LCD monitors. We provide a comprehensive overview of the traces found in recaptured images, and we argue that aliasing and blurriness are the least scene dependent features. We then show how aliasing can be eliminated by setting the capture parameters to predetermined values. Driven by this finding, we propose a recapture detection algorithm based on learned edge blurriness. Two sets of dictionaries are trained using the K-singular value decomposition approach from the line spread profiles of selected edges from single captured and recaptured images. An support vector machine classifier is then built using dictionary approximation errors and the mean edge spread width from the training images. The algorithm, which requires no user intervention, was tested on a database that included more than 2500 high-quality recaptured images. Our results show that our method achieves a performance rate that exceeds 99% for recaptured images and 94% for single captured images.
机译:借助当今的数码相机技术,可以相对轻松地从液晶显示器(LCD)的显示屏中重新捕获高质量的图像。攻击者可能选择重新捕获伪造的图像,以掩盖瑕疵并提高其真实性。在本文中,我们解决了检测从LCD监视器捕获的图像的问题。我们提供了重新捕获的图像中发现的痕迹的全面概述,并且我们认为混叠和模糊性是最少与场景相关的功能。然后,我们展示如何通过将捕获参数设置为预定值来消除混叠。基于这一发现,我们提出了一种基于学习到的边缘模糊度的重获检测算法。使用K奇异值分解方法从单个捕获和重新捕获的图像的选定边缘的线散布轮廓中训练出两组字典。然后使用字典逼近误差和训练图像的平均边缘扩展宽度构建支持向量机分类器。该算法无需用户干预,已在包含2500多个高质量重新捕获图像的数据库上进行了测试。我们的结果表明,我们的方法对于重新捕获的图像实现了超过99%的性能,对于单次捕获的图像实现了94%的性能。

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