An efficient novel dual deep network architecture for video forgery detection

Chandrakala Chandrakala, Mungamuri Sasikala
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Abstract

The technique of video copy-move forgery (CMF) is commonly employed in various industries; digital videography is regularly used as the foundation for vital graphic evidence that may be modified using the aforementioned method. Recently in the past few decades, forgery in digital images is detected via machine intellect. The second issue includes continuous allocation of parallel frames having relevant backgrounds erroneously results in false implications, detected as CMF regions third include as the CMF is divided into inter-frame or intra-frame forgeries to detect video copy is not possible by most of the existing methods. Thus, this research presents the dual deep network (DDN) for efficient and effective video copy-move forgery detection (VCMFD); DDN comprises two networks; the first detection network (DetNet1) extracts the general deep features and second detection network (DetNet2) extracts the custom deep features; both the network are interconnected as the output of DetNet1 is given to DetNet2. Furthermore, a novel algorithm is introduced for forged frame detection and optimization of the falsely detected frame. DDN is evaluated considering the two benchmark datasets REWIND and video tampering dataset (VTD) considering different metrics; furthermore, evaluation is carried through comparing the recent existing model. DDN outperforms the existing model in terms of various metrics.
用于视频伪造检测的高效新型双深度网络架构
视频复制移动伪造(CMF)技术在各行各业都得到了普遍应用;数字视频经常被用作重要图像证据的基础,而这些证据可能会被上述方法修改。近几十年来,数字图像中的伪造被机器智能检测出来。目前的研究发现,数字图像的伪造主要有三个问题:第一个问题是数字图像中的伪造是不可能的;第二个问题是具有相关背景的并行帧的连续分配错误地导致了错误的含义,被检测为 CMF 区域;第三个问题是 CMF 被分为帧间伪造和帧内伪造,大多数现有方法都无法检测视频拷贝。因此,本研究提出了双深度网络(DDN),用于高效和有效的视频拷贝-移动伪造检测(VCMFD);DDN 由两个网络组成;第一个检测网络(DetNet1)提取一般深度特征,第二个检测网络(DetNet2)提取自定义深度特征;两个网络相互连接,DetNet1 的输出给 DetNet2。此外,还引入了一种用于伪帧检测和优化误检测帧的新算法。我们使用两个基准数据集 REWIND 和视频篡改数据集 (VTD) 对 DDN 进行了评估,考虑到了不同的指标;此外,还通过比较最新的现有模型进行了评估。从各种指标来看,DDN 均优于现有模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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