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混合参考的视频源识别。

Hybrid reference-based Video Source Identification.

机构信息

Department of Information Engineering, University of Florence, 50139 Florence, Italy.

FORLAB-Multimedia Forensics Laboratory, PIN Scrl, 59100 Prato, Italy.

出版信息

Sensors (Basel). 2019 Feb 5;19(3):649. doi: 10.3390/s19030649.

Abstract

Millions of users share images and videos generated by mobile devices with different profiles on social media platforms. When publishing illegal content, they prefer to use anonymous profiles. Multimedia Forensics allows us to determine whether videos or images have been captured with the same device, and thus, possibly, by the same person. Currently, the most promising technology to achieve this task exploits unique traces left by the camera sensor into the visual content. However, image and video source identification are still treated separately from one another. This approach is limited and anachronistic, if we consider that most of the visual media are today acquired using smartphones that capture both images and videos. In this paper we overcome this limitation by exploring a new approach that synergistically exploits images and videos to study the device from which they both come. Indeed, we prove it is possible to identify the source of a digital video by exploiting a reference sensor pattern noise generated from still images taken by the same device. The proposed method provides performance comparable with or even better than the state-of-the-art, where a reference pattern is estimated from video frames. Finally, we show that this strategy is effective even in the case of in-camera digitally stabilized videos, where a non-stabilized reference is not available, thus solving the limitations of the current state-of-the-art. We also show how this approach allows us to link social media profiles containing images and videos captured by the same sensor.

摘要

数以百万计的用户在社交媒体平台上使用不同配置文件共享移动设备生成的图像和视频。当发布非法内容时,他们更倾向于使用匿名配置文件。多媒体取证使我们能够确定视频或图像是否使用同一设备拍摄,因此,可能是同一人拍摄的。目前,实现此任务最有前途的技术是利用相机传感器在视觉内容中留下的独特痕迹。然而,图像和视频源识别仍然彼此分开。如果我们考虑到现在大多数视觉媒体都是使用智能手机拍摄的,这些智能手机既可以拍摄图像又可以拍摄视频,那么这种方法就具有局限性和过时性。在本文中,我们通过探索一种新的方法来克服这一限制,该方法协同利用图像和视频来研究它们来自的设备。实际上,我们证明通过利用同一设备拍摄的静态图像生成的参考传感器图案噪声,可以识别数字视频的来源。所提出的方法提供的性能与从视频帧中估计参考模式的最先进方法相当,甚至更好。最后,我们表明,即使在相机内数字稳定的视频情况下,这种策略也是有效的,因为在这种情况下,无法获得非稳定的参考,从而解决了当前最先进方法的局限性。我们还展示了这种方法如何允许我们链接由同一传感器拍摄的包含图像和视频的社交媒体个人资料。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/db1f/6386914/6a68d1cc51b7/sensors-19-00649-g001.jpg

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