论文标题
解决ISO速度对PRNU和伪造检测的影响
On Addressing the Impact of ISO Speed upon PRNU and Forgery Detection
论文作者
论文摘要
照片响应不均匀性(PRNU)已被用作图像伪造检测的强大装置指纹,因为可以通过在操纵区域中发现PRNU的不存在来揭示图像伪造。通常将图像噪声残差与设备参考PRNU之间的相关性与检查PRNU存在的决策阈值进行比较。假设相关性依赖于内容,通常使用PRNU相关预测指标来确定此决策阈值。但是,我们发现相关性不仅取决于内容,而且还取决于相机灵敏度设置。 \ textIt {相机灵敏度},通常以\ textIt {iso speed}的名称而闻名,是数字摄影中的重要属性。在这项工作中,我们将显示PRNU相关性对ISO速度的依赖性。由于这种依赖性,我们假设相关预测变量是ISO速度特异性的,即\ textIt {可靠的相关预测只有在使用与所涉及图像的ISO速度相似的ISO速度图像进行训练时,才能进行可靠的相关预测}。我们报告了我们进行的实验以验证假设。可以意识到,在现实世界中,有关ISO速度的信息可能无法在元数据中获得,以促进在相关预测过程中实施我们的假设。因此,我们提出了一种称为ISO速度(CINFISOS)基于内容的推断的方法,以从图像内容中推断ISO速度。
Photo Response Non-Uniformity (PRNU) has been used as a powerful device fingerprint for image forgery detection because image forgeries can be revealed by finding the absence of the PRNU in the manipulated areas. The correlation between an image's noise residual with the device's reference PRNU is often compared with a decision threshold to check the existence of the PRNU. A PRNU correlation predictor is usually used to determine this decision threshold assuming the correlation is content-dependent. However, we found that not only the correlation is content-dependent, but it also depends on the camera sensitivity setting. \textit{Camera sensitivity}, commonly known by the name of \textit{ISO speed}, is an important attribute in digital photography. In this work, we will show the PRNU correlation's dependency on ISO speed. Due to such dependency, we postulate that a correlation predictor is ISO speed-specific, i.e. \textit{reliable correlation predictions can only be made when a correlation predictor is trained with images of similar ISO speeds to the image in question}. We report the experiments we conducted to validate the postulate. It is realized that in the real-world, information about the ISO speed may not be available in the metadata to facilitate the implementation of our postulate in the correlation prediction process. We hence propose a method called Content-based Inference of ISO Speeds (CINFISOS) to infer the ISO speed from the image content.