A fast forgery frame detection method for video copy-move inter/intra-frame identification

被引:0
作者
Jun-Liu Zhong
Yan-Fen Gan
Ji-Xiang Yang
机构
[1] Guangzhou Maritime University,Department of Information and Communication Engineering
[2] Guangdong University of Foreign Studies,Department of Information Science and Technology, South China Business College
[3] Guangdong Mechanical and Electrical College,Department of Electronics and Communications
[4] Macau University of Science and Technology,Faculty of Information Technology
来源
Journal of Ambient Intelligence and Humanized Computing | 2023年 / 14卷
关键词
A fast forgery frame detection; Video copy-move inter/intra-frame identification; Sparse feature extraction and matching; Two-pass filtering; Copy-move frame-pair matching;
D O I
暂无
中图分类号
学科分类号
摘要
Digital video is critical visual evidence in various fields and is easily manipulated under different techniques such as the popular video copy-move forgery. In the past decades, although machine intelligence has been widely adopted to detect the forgery in digital images automatically, It still remains a very challenging detection task for carefully-crafted copy-move forgery in digital video for three reasons: (i) A video of medium length containing hundreds of frames already incurs a prohibitive computational cost; (ii) Similar backgrounds in contiguous frames are easily mistakenly detected as copy-move forgery regions, resulting to a large number of false alarms; (iii) Most state-of-the-art methods cannot detect video copy-move inter-frame or intra-frame forgeries; To effectively address these issues, a fast forgery frame detection method for video copy-move inter/intra-frame identification is proposed: (i) The sparse feature extraction and matching speed-up the algorithm processing and reduce the time cost greatly (Defect (i)); (ii) The adaptive two-pass filtering and copy-move frame-pair matching can address the similarity problem (Defect (ii)) to locate truly forgery frame-pairs (FFP); (iii) Based on the results of these FFP, the type of video copy-move forgery detection can be identified (Defect (iii)). Furthermore, the copy-move frame-pair matching algorithm locates truly FFP, thus further reducing the computation cost and false alarm for detecting the inter/intra-frame forgery efficiently and effectively (Defect (i)). Finally, based on the truly FFP, the video can be checked for forgery or original. If there is no truly FFP, the video is considered as the original one. Otherwise, the video is checked if the forgery is inter-frame (i.e., truly FFP frames are two different frames) or intra-frame (the same frame). The experimental results show that our proposed algorithm achieves higher detection accuracy and higher robustness (false alarm = 2 and F1 = 0.90) in the whole GRIP dataset than the existing state-of-the-art methods under various adverse conditions.
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页码:1647 / 1658
页数:11
相关论文
共 59 条
  • [11] Huang J(2014)Scalable nearest neighbor algorithms for high dimensional data IEEE Trans Pattern Anal Mach Intell 36 2227-2240
  • [12] Davino D(2020)Classification of authentic and tampered video using motion residual and parasitic layers IEEE Access 8 56782-56797
  • [13] Cozzolino D(2018)A fast forgery detection algorithm based on exponential-fourier moments for video region duplication IEEE Trans Multimed 20 825-840
  • [14] Poggi G(2016)Exposing frame deletion by detecting abrupt changes in video streams Neurocomputing 205 84-91
  • [15] Verdoliva L(2015)Efficient video frame insertion and deletion detection based on inconsistency of correlations between local binary pattern coded frames Secur Commun Netw 8 311-320
  • [16] Fischler MA(2019)Copy-move forgery detection using adaptive keypoint filtering and iterative region merging Multimed Tools Appl 78 26313-26339
  • [17] Bolles RC(2020)Dense moment feature index and best match algorithms for video copy-move forgery detection Inf Sci 537 184-202
  • [18] Jia S(undefined)undefined undefined undefined undefined-undefined
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