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Digital Camera Identification from Images - Estimating False Acceptance Probability (Invited Paper)

机译:从图像识别数码相机-估计错误接受概率(特邀论文)

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Photo-response non-uniformity noise present in output signals of CCD and CMOS sensors has been used as fingerprint to uniquely identify the source digital camera that took the image. The same fingerprint can establish a link between images according to their common source. In this paper, we review the state-of-the-art identification method and discuss its practical issues. In the camera identification task, when formulated as a binary hypothesis test, a decision threshold is set on correlation between image noise and modulated fingerprint. The threshold determines the probability of two kinds of possible errors: false acceptance and missed detection. We will focus on estimation of the false acceptance probability that we wish to keep very low. A straightforward approach involves testing a large number of different camera fingerprints against one image or one camera fingerprint against many images from different sources. Such sampling of the correlation probability distribution is time consuming and expensive while extrapolation of the tails of the distribution is still not reliable. A novel approach is based on cross-correlation analysis and peak-to-correlation-energy ratio.
机译:CCD和CMOS传感器的输出信号中存在的光响应非均匀噪声已被用作指纹,以唯一地识别拍摄图像的源数码相机。相同的指纹可以根据图像的共同来源在图像之间建立链接。在本文中,我们回顾了最新的识别方法并讨论了其实际问题。在相机识别任务中,当公式化为二进制假设检验时,将根据图像噪声和调制指纹之间的相关性设置决策阈值。阈值确定两种可能的错误的可能性:错误接受和漏检。我们将集中于估计我们希望保持很低的错误接受概率。一种简单的方法涉及针对一个图像测试大量不同的相机指纹,或针对来自不同来源的许多图像测试一个相机指纹。相关概率分布的这种采样既费时又昂贵,而对分布的尾部进行外推仍然不可靠。一种新的方法是基于互相关分析和峰相关能量比。

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