A new video forgery detection approach based on forgery line

A new video forgery detection approach based on forgery line

In recent years, we have continually encountered multimedia les in daily life, as evidence in courts, medical records in hospitals, etc. Many multimedia-editing software tools have been developed in parallel to the widespread usage of multimedia les. Thus, forgery operations can be committed by anyone with this software, even if s/he does not have any skill in this eld. Authentication of the originality of multimedia les has recently become a popular topic. In this work, we propose a new video forgery detection approach to detect forged frames with better execution and detection capability. Features are extracted from the frames and their correlations are represented as a correlation image. This method investigates a line on the correlation image to determine the forgery operation. Then two new procedures (shrinking/expanding) are applied to the detected line to determine the exact location of the forgery. The experimental results indicate that the proposed method can detect forgery operations with better execution time and detection capability when compared to similar works in the literature.

___

  • [1] Wang W, Farid H. Exposing digital forgeries in video by detecting duplication. In: ACM 2007 Workshop on Multimedia and Security; 20{21 September 2007; Dallas, TX, USA. New York, NY, USA: ACM. pp. 35-42.
  • [2] Lin GS, Chang JF. Detection of frame duplication forgery in videos based on spatial and temporal analysis. Int J Pattern Recogn 2012; 26: 1250017.
  • [3] Yang J, Huang T, Su L. Using similarity analysis to detect frame duplication forgery in videos. Multimed Tools Appl 2016; 75: 1793-1811.
  • [4] Ulutas G, Ustubioglu B, Ulutas M, Nabiyev VV. Frame duplication/mirroring detection method with binary features. IET Image Process 2017; 11: 333-342.
  • [5] Sitara K, Mehtre BM. Digital video tampering detection: An overview of passive techniques. Digit Invest 2016; 18: 8-22.
  • [6] Wang W, Farid H. Exposing digital forgeries in video by detecting double MPEG compression. In: ACM 2006 Workshop on Multimedia and Security; 26{27 September 2006; Geneva, Switzerland. New York, NY, USA: ACM. pp. 37-47.
  • [7] Wang W, Farid H. Exposing digital forgeries in video by detecting double quantization. In: ACM 2009 Workshop on Multimedia and Security; 7{8 September 2009; Princeton, NJ, USA. New York, NY, USA: ACM. pp. 39-48.
  • [8] Sun T, Wang W, Jiang X. Exposing video forgeries by detecting MPEG double compression. In: IEEE 2012 International Conference on Acoustics, Speech and Signal Processing; 25{30 March 2012; Kyoto, Japan. New York, NY, USA: IEEE. pp. 1389-1392.
  • [9] Vazquez-Padin D, Fontani M, Bianchi T, Comesana P, Piva A, Barni M. Detection of video double encoding with GOP size estimation. In: IEEE 2012 International Workshop on Information Forensics and Security; 2{5 December 2012; Costa Adeje, Spain. New York, NY, USA: IEEE. pp. 151-156.
  • [10] Jiang X, Wang W, Sun T, Shi YQ, Wang S. Detection of double compression in MPEG-4 videos based on Markov statistics. IEEE Signal Process Lett 2013; 20: 447-450.
  • [11] Huan Z, Huang F, Huang J. Detection of double compression with the same bit rate in MPEG-2 videos. In: IEEE 2014 International Conference on Signal and Information Processing; 9{13 July 2014; Xi'an, China. New York, NY, USA: IEEE. pp. 306-309.
  • [12] Wang W, Farid H. Exposing digital forgeries in interlaced and deinterlaced video. IEEE T Inf Foren Sec 2007; 2: 438-449.
  • [13] Li L, Wang X, Zhang W, Yang G, Hu G. Detecting removed object from video with stationary background. Lect Notes Comp Sci 2013; 7809: 242-252.
  • [14] Hsu CC, Hung TY, Lin CW. Video forgery detection using correlation of noise residue. In: IEEE 2008 Workshop on Multimedia Signal Processing; 8{10 October 2008; Brisbane, QLD, Australia. New York, NY, USA: IEEE. pp. 170-174.
  • [15] Su L, Huang T, Yang J. A video forgery detection algorithm based on compressive sensing. Multimed Tools Appl 2015; 74: 6641-6656.
  • [16] Bidokhti A, Ghaemmaghami S. Detection of regional copy/move forgery in MPEG videos using optical ow. In: IEEE 2015 International Symposium on Arti cial Intelligence and Signal Processing; 3{5 March 2015; Mashad, Iran. New York, NY, USA: IEEE. pp. 13-17.
  • [17] Chao J, Jiang X, Sun T. A novel video inter-frame forgery model detection scheme based on optical ow consistency. Lect Notes Comp Sci 2013; 7809: 267-281.
  • [18] Singh VK, Pant P, Tripathi RC. Detection of frame duplication type of forgery in digital video using sub-block based features. In: EAI 2015 International Conference on Digital Forensics and Cyber Crime; 6{8 October 2015; Seoul, South Korea. Ghent, Belgium: European Alliance for Innovation, pp. 29-38.
  • [19] Qadir G, Yahaya S, Ho AT. Surrey University Library for Forensic Analysis (SULFA) of Video Content. Surrey, UK: University of Surrey, 2012.