基于传感器模式噪声估计的高效源相机图像锐化

Ashref Lawgaly, F. Khelifi, A. Bouridane
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引用次数: 18

摘要

传感器模式噪声(SPN)已广泛应用于图像认证和相机源识别。其丰富的信息,它沿着宽频率范围允许在许多成像传感器的存在可靠的识别。SPN估计依赖于一组图像与其平滑版本之间的差异来捕获传感器的特性。因此,该过程使用了一部分传感器噪声内容,这些噪声内容集中在高频范围内,存在于图像的边缘、轮廓和纹理区域。在本文中,我们提出了一种锐化方法来放大PRNU分量以获得更好的估计,从而提高相机源识别(CSI)的性能。通过两种最新的源相机识别技术,所提出的方法已经取得了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Sharpening for Efficient Source Camera Identification Based on Sensor Pattern Noise Estimation
Sensor pattern noise (SPN) has been widely used for image authentication and camera source identification. Its abundance in terms of the information that it carries along a wide frequency range allows for reliable identification in the presence of many imaging sensors. SPN estimation relies on the difference between a set of images and their smoothened versions to capture the characteristics of the sensor. Therefore, this process uses a part of the sensor noise content which is concentrated in the high frequency range and present in edges, contours and textured areas of the images. In this report, we propose to use a sharpening method to amplify the PRNU components for better estimation, thus enhancing the performance of camera source identification (CSI). Significant improvements have been achieved by the proposed method as demonstrated with two recent source camera identification techniques.
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