基于深度学习的时间图像取证分析

F. Ahmed, F. Khelifi, Ashref Lawgaly, A. Bouridane
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引用次数: 5

摘要

估计数字照片的获取日期在图像取证中是至关重要的。通过处理图像内容来确定图像的日期的任务应该是相当准确的,因为这可以在法庭上用于解决引人注目的案件。时间取证分析的目的是找出两个或多个证据之间的时间联系。在本文中,通过在时间图像取证中首次采用深度学习方法,从机器学习的角度解决了图像测年问题。在这项工作中,以这样一种方式估计数字图像的采集时间,即分析人员可以识别来自同一来源的一组已知时间顺序的未知数字照片的时间轴。通过将卷积神经网络(CNN),即AlexNet和GoogLeNet架构应用于特征提取和迁移学习模式,结果表明,网络可以成功地学习从同一来源获取的数字图像内容的时间变化。有趣的是,虽然为了增加训练样本和馈入cnn的数量,将图像划分为不重叠的块,但得到的估计精度已经从80%提高到88%。这表明,cnn模拟的图像内容的时间变化不依赖于块位置。这已经在一个名为“诺森比亚时间图像取证”(NTIF)的新数据库中得到了证明,该数据库已公开提供给图像取证研究人员。NTIF是第一个使用10种不同的数码相机定期在不同时间段捕获大量图像的公共数据库。这将为研究社区提供一个坚实的基础,用于研究照片约会和其他图像取证应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Image Forensic Analysis for Picture Dating with Deep Learning
Estimating the acquisition date of digital photographs is crucial in image forensics. The task of dating images by processing their contents should be reasonably accurate as this can be used in court to resolve high profile cases. The goal of temporal forensics analysis is to find out the links in time between two or more pieces of evidence. In this paper, the problem of picture dating is addressed from a machine learning perspective, precisely, by adopting a deep learning approach for the first time in temporal image forensics. In this work, the acquisition time of digital images is estimated in such a way that the analyst can identify the timeline of unknown digital photographs given a set of pictures from the same source whose time ordering is known. By applying Convolutional Neural Networks (CNN), namely the AlexNet and GoogLeNet architectures in both feature extraction and transfer learning modes, results have shown that the networks can successfully learn the temporal changes in the content of the digital pictures that are acquired from the same source. Interestingly, although images are divided into non-overlapping blocks in order to increase the number of training samples and feed CNNs, the obtained estimation accuracy has been from 80% to 88%. This suggests that the temporal changes in image contents, modelled by CNNs, are not dependent on block location. This has been demonstrated on a new database called ‘Northumbria Temporal Image Forensics’ (NTIF) database which has been made publicly available for researchers in image forensics. NTIF is the first public database that captures a large number of images at different timeslots on a regular basis using 10 different digital cameras. This will serve the research community as a solid ground for research on picture dating and other image forensics applications.
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