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Robustness of digital camera identification with convolutional neural networks

机译:卷积神经网络数码相机识别的鲁棒性

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摘要

This paper considers the area of digital forensics (DF). One of the problem in DF is the issue of identification of digital cameras based on images. This aspect has been attractive in recent years due to popularity of social media platforms like Facebook, Twitter etc., where lots of photographs are shared. Although many algorithms and methods for digital camera identification have been proposed, there is lack of research about their robustness. Therefore, in this paper the robustness of digital camera identification with the use of convolutional neural network is discussed. It is assumed that images may be of poor quality, for example, degraded by Poisson noise, Gaussian blur, random noise or removing pixels' least significant bit. Experimental evaluation conducted on two large image datasets (including Dresden Image Database) confirms usefulness of proposed method, where noised images are recognized with almost the same high accuracy as normal images.
机译:本文考虑了数字取证区域(DF)。 DF中的一个问题是基于图像识别数码相机的问题。 这方面近年来由于Facebook,Twitter等的社交媒体平台的普及,其中很多照片都是共享的。 尽管已经提出了许多算法和用于数码相机识别的方法,但缺乏关于其鲁棒性的研究。 因此,在本文中,讨论了使用卷积神经网络的数码相机识别的鲁棒性。 假设图像可以具有差的质量,例如,通过泊松噪声,高斯模糊,随机噪声或去除像素的最低有效位来降低。 在两个大图像数据集(包括德累斯顿图像数据库)上进行的实验评估确认了所提出的方法的用量,其中识别出的声音图像与正常图像几乎相同的高精度。

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