帧内复制-移动视频伪造检测

Raksha Pandey, A. Kushwaha, Suraj Sharma, Ankit Anand, Suraj Kumar
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引用次数: 0

摘要

随着全球社交网络上视频分享的增加,高质量的假视频也在增加。伪造视频会影响视频整体的真实性和完整性。这可能会导致严重的后果。例如,在法庭上作为证据使用的视频中,伪造的存在可能会牵连无辜者或帮助罪犯逃脱法律制裁。这就需要检测机制来应对。这导致发现了几种不同的方法,通过分析由于回火的副作用来检测复制-移动伪造。最常见的一种方法是复制移动视频伪造,它包括复制帧的区域。传统的方法是手动检测与复制相关的模式,但这种方法并不成功。相比之下,与深度学习相关的方法给出了更好的结果。因此,本研究采用深度学习模型,利用相关架构检测复制-移动视频伪造。
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Intra-frame Copy-move Video Forgery Detection
With the increase in sharing of videos worldwide over social networks, presence of high-quality fakes is on increase. Forged videos affect the authenticity and integrity of the video as a whole. This can lead to serious implications. For example, in case of video to be used in courts as an evidence, presence of forgery can implicate innocents or help criminal to escape justice. This calls for the detection mechanisms to counter. This leads to the discovery of several different approaches to detect copy-move forgery by analysing the side effects due to tempering. One of the most common approaches is copy-move video forgery which consists of duplicating area of frame. Traditional approach detects for patterns related to duplication manually which is not so successful. In contrast, methods related to deep learning gives better results. Therefore, this research follows deep learning model using pertained architecture to detect copy-move video forgery.
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