Singh Raahat Devender, Aggarwal Naveen
University Institute of Engineering and Technology, Panjab University, Sector 25, Chandigarh, 160014, India.
Forensic Sci Int. 2017 Dec;281:75-91. doi: 10.1016/j.forsciint.2017.10.028. Epub 2017 Oct 26.
Amidst the continual march of technology, we find ourselves relying on digital videos to proffer visual evidence in several highly sensitive areas such as journalism, politics, civil and criminal litigation, and military and intelligence operations. However, despite being an indispensable source of information with high evidentiary value, digital videos are also extremely vulnerable to conscious manipulations. Therefore, in a situation where dependence on video evidence is unavoidable, it becomes crucial to authenticate the contents of this evidence before accepting them as an accurate depiction of reality. Digital videos can suffer from several kinds of manipulations, but perhaps, one of the most consequential forgeries is copy-paste forgery, which involves insertion/removal of objects into/from video frames. Copy-paste forgeries alter the information presented by the video scene, which has a direct effect on our basic understanding of what that scene represents, and so, from a forensic standpoint, the challenge of detecting such forgeries is especially significant. In this paper, we propose a sensor pattern noise based copy-paste detection scheme, which is an improved and forensically stronger version of an existing noise-residue based technique. We also study a demosaicing artifact based image forensic scheme to estimate the extent of its viability in the domain of video forensics. Furthermore, we suggest a simplistic clustering technique for the detection of copy-paste forgeries, and determine if it possess the capabilities desired of a viable and efficacious video forensic scheme. Finally, we validate these schemes on a set of realistically tampered MJPEG, MPEG-2, MPEG-4, and H.264/AVC encoded videos in a diverse experimental set-up by varying the strength of post-production re-compressions and transcodings, bitrates, and sizes of the tampered regions. Such an experimental set-up is representative of a neutral testing platform and simulates a real-world forgery scenario where the forensic investigator has no control over any of the variable parameters of the tampering process. When tested in such an experimental set-up, the four forensic schemes achieved varying levels of detection accuracies and exhibited different scopes of applicabilities. For videos compressed using QFs in the range 70-100, the existing noise residue based technique generated average detection accuracy in the range 64.5%-82.0%, while the proposed sensor pattern noise based scheme generated average accuracy in the range 89.9%-98.7%. For the aforementioned range of QFs, average accuracy rates achieved by the suggested clustering technique and the demosaicing artifact based approach were in the range 79.1%-90.1% and 83.2%-93.3%, respectively.
在技术不断进步的过程中,我们发现自己在新闻、政治、民事和刑事诉讼以及军事和情报行动等多个高度敏感领域依赖数字视频来提供视觉证据。然而,尽管数字视频是具有高证据价值的不可或缺的信息来源,但它们也极易受到蓄意篡改。因此,在不可避免地依赖视频证据的情况下,在将这些证据的内容视为对现实的准确描述之前对其进行认证就变得至关重要。数字视频可能会遭受多种篡改,但也许最严重的伪造之一是复制粘贴伪造,即涉及在视频帧中插入/移除对象。复制粘贴伪造会改变视频场景呈现的信息,这直接影响我们对该场景所代表内容的基本理解,所以,从法医角度来看,检测此类伪造的挑战尤为重大。在本文中,我们提出了一种基于传感器图案噪声的复制粘贴检测方案,它是现有基于噪声残差技术的改进版,且在法医鉴定方面更强。我们还研究了一种基于去马赛克伪像的图像法医方案,以评估其在视频法医领域的可行性程度。此外,我们提出了一种用于检测复制粘贴伪造的简单聚类技术,并确定它是否具备可行且有效的视频法医方案所需的能力。最后,我们在一组经过实际篡改的MJPEG、MPEG - 2、MPEG - 4和H.264/AVC编码视频上验证了这些方案,通过改变后期制作重新压缩和转码的强度、比特率以及篡改区域的大小,在多样的实验设置中进行测试。这样的实验设置代表了一个中立的测试平台,并模拟了一个现实世界的伪造场景,在此场景中法医调查人员无法控制篡改过程的任何可变参数。在这样的实验设置下进行测试时,这四种法医方案实现了不同程度的检测准确率,并展现出不同适用范围。对于使用70 - 100范围内量化因子(QF)压缩的视频,现有的基于噪声残差的技术产生的平均检测准确率在64.5% - 82.0%范围内,而所提出的基于传感器图案噪声的方案产生的平均准确率在89.9% - 98.7%范围内。对于上述QF范围,所提出的聚类技术和基于去马赛克伪像的方法所达到的平均准确率分别在79.1% - 90.1%和83.2% - 93.3%范围内。