Photo Response Non-Uniformity (PRNU) is considered the most effective trace for the image source attribution task. Its uniqueness ensures that the sensor pattern noises extracted from different cameras are strongly uncorrelated, even when they belong to the same camera model. However, with the advent of computational photography, most recent devices heavily process the acquired pixels, possibly introducing non-unique artifacts that may reduce PRNU noise's distinctiveness, especially when several exemplars of the same device model are involved in the analysis. Considering that PRNU is an image forensic technology that finds actual and wide use by law enforcement agencies worldwide, it is essential to keep validating such technology on recent devices as they appear. In this paper, we perform an extensive testing campaign on over 33.000 Flickr images belonging to 45 smartphone and 25 DSLR camera models released recently to determine how widespread the issue is and which is the plausible cause. Experiments highlight that most brands, like Samsung, Huawei, Canon, Nikon, Fujifilm, Sigma, and Leica, are strongly affected by this issue. We show that the primary cause of high false alarm rates cannot be directly related to specific camera models, firmware, nor image contents. It is evident that the effectiveness of \prnu based source identification on the most recent devices must be reconsidered in light of these results. Therefore, this paper is intended as a call to action for the scientific community rather than a complete treatment of the subject. Moreover, we believe publishing these data is important to raise awareness about a possible issue with PRNU reliability in the law enforcement world.
翻译:照片反应不统一(PRNU)被认为是图像源归属任务的最有效线索。 它的独特性确保了从不同相机中提取的传感器模式噪音即使属于同一相机模型,也非常不相干。 然而,随着计算摄影的到来,最新设备大量处理获得的像素,可能引入非单一的人工制品,可能降低PNU噪音的独特性,特别是当同一设备模型的若干外型产品参与分析时。考虑到PRNU是一种图像法证技术,为全世界执法机构实际和广泛使用,因此,有必要对最近出现的设备继续使用这种技术。在本文中,我们对45个智能手机和25个DSLR相机模型的33000多个Flickr图像进行了广泛的测试活动,以确定这一问题的广度和原因。 实验显示,大多数品牌,如Samsung、Huafwei、Canon、Niken、Fufilm、Sigri和Leica,都受到这一问题的强烈影响。 我们用高清晰的图像显示,最近高清晰度的准确度的准确度速度,而不是以直截面的图像为基础, 。我们无法相信这些精确度的图像的原始的图像的精确度数据来源。