追踪图像回到它们的社交网络来源:一种基于cnn的方法

Irene Amerini, Tiberio Uricchio, R. Caldelli
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引用次数: 37

摘要

恢复数字内容(如图像或视频)的历史信息对于从早期阶段着手调查具有战略意义。嫌疑犯的存储设备、智能手机和个人电脑通常会在逮捕令发出后立即被没收。找到的任何多媒体内容都要进行深入分析,以便追溯其出处,如果可能的话,追溯其原始来源。这在处理社交网络时尤其重要,因为大多数用户生成的照片和视频都是每天上传和分享的。能够辨别图像是从社交网络下载的还是直接由数码相机拍摄的,对于领导连续调查至关重要。在本文中,我们提出了一种基于卷积神经网络(CNN)的新方法来确定图像来源,无论它是来自社交网络,消息传递应用程序还是直接来自相机。通过只考虑可视内容,无论攻击者最终是否对元数据进行操作,该方法都能正常工作。我们已经在从七个流行的社交网络下载的三个公开可用的图像数据集上测试了所提出的技术,获得了最先进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracing images back to their social network of origin: A CNN-based approach
Recovering information about the history of a digital content, such as an image or a video, can be strategic to address an investigation from the early stages. Storage devices, smart-phones and PCs, belonging to a suspect, are usually confiscated as soon as a warrant is issued. Any multimedia content found is analyzed in depth, in order to trace back its provenance and, if possible, its original source. This is particularly important when dealing with social networks, where most of the user-generated photos and videos are uploaded and shared daily. Being able to discern if images are downloaded from a social network or directly captured by a digital camera, can be crucial in leading consecutive investigations. In this paper, we propose a novel method based on convolutional neural networks (CNN) to determine the image provenance, whether it originates from a social network, a messaging application or directly from a photo-camera. By considering only the visual content, the method works irrespective of an eventual manipulation of metadata performed by an attacker. We have tested the proposed technique on three publicly available datasets of images downloaded from seven popular social networks, obtaining state-of-the-art results.
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