Berdich Adriana, Groza Bogdan
Faculty of Automatics and Computers, Politehnica University of Timisoara, 300223 Timisoara, Romania.
Entropy (Basel). 2022 Aug 19;24(8):1158. doi: 10.3390/e24081158.
Camera sensor identification can have numerous forensics and authentication applications. In this work, we follow an identification methodology for smartphone camera sensors using properties of the Dark Signal Nonuniformity (DSNU) in the collected images. This requires taking dark pictures, which the users can easily do by keeping the phone against their palm, and has already been proposed by various works. From such pictures, we extract low and mid frequency AC coefficients from the DCT (Discrete Cosine Transform) and classify the data with the help of machine learning techniques. Traditional algorithms such as KNN (K-Nearest Neighbor) give reasonable results in the classification, but we obtain the best results with a wide neural network, which, despite its simplicity, surpassed even a more complex network architecture that we tried. Our analysis showed that the blue channel provided the best separation, which is in contrast to previous works that have recommended the green channel for its higher encoding power.
相机传感器识别可应用于众多取证和认证领域。在这项工作中,我们采用一种利用收集图像中暗信号非均匀性(DSNU)特性的智能手机相机传感器识别方法。这需要拍摄暗图像,用户可以通过将手机贴在手掌上轻松完成,并且已有多项研究提出过这种方法。从这些图像中,我们从离散余弦变换(DCT)中提取低频和中频交流系数,并借助机器学习技术对数据进行分类。传统算法如K近邻(KNN)在分类中能给出合理结果,但我们使用一个宽神经网络获得了最佳结果,该网络尽管简单,却甚至超过了我们尝试过的更复杂的网络架构。我们的分析表明蓝色通道提供了最佳的区分度,这与之前推荐绿色通道因其更高编码能力的研究形成对比。