Your browser does not support JavaScript!
http://iet.metastore.ingenta.com
1887

access icon free Inter-frame forgery detection and localisation in videos using earth mover's distance metric

Video forensics is one of the hot topics in multimedia forensics. Nowadays, spreading fake videos across the internet is becoming a profession mainly in politics and entertainment. In this study, a novel two-stage inter-frame video forgery detection technique is proposed. The first stage analyses spatio-temporal feature flow consistency to detect suspicious tamper points. Identifying the type of forgery and validating the recovered video are done in the second stage. Earth mover's distance is used as a similarity metric in both stages. The authors concentrate on a robust inter-frame forgery detection approach which can be applied for any challenging video. Compression at a higher rate, noise addition, and filtering are the anti-forensic tricks used by forgers to fool forensic techniques. However, most of the literature in video forgery detection has handled these issues as post-processing attacks and reported lesser accuracies for it. Hence the authors propose a robust and efficient forgery detection technique capable of identifying all kinds of inter-frame forgeries in videos. Experimental evaluation of the public video data set shows that the proposed approach outperforms existing approaches with an improved rate of robustness.

References

    1. 1)
      • 14. Fadl, M.S., Han, Q., Li, Q.: ‘Authentication of surveillance videos: detecting frame duplication based on residual frame’, J. Forensic Sci., 2017, 63, (4), pp. 10991109.
    2. 2)
      • 11. Mayer, O., Stamm, M.C.: ‘Accurate and efficient image forgery detection using lateral chromatic aberration’, IEEE Trans. Inf. Forensics Sec., 2018, 13, (7), pp. 17621777.
    3. 3)
      • 20. Stamm, M.C., Lin, W.S., Liu, K.J.R.: ‘Temporal forensics and anti-forensics for motion compensated video’, IEEE Trans. Inf. Forensics Sec., 2012, 7, (4), pp. 13151329.
    4. 4)
      • 8. Devi Mahalakshmi, S., Vijayalakshmi, K., Priyadharsini, S.: ‘Digital image forgery detection and estimation by exploring basic image manipulations’, Int. J. Digit. Invest., 2012, 8, pp. 215225.
    5. 5)
      • 25. Rubner, Y., Tomasi, C., Guibas, L.J.: ‘The earth mover's distance as a metric for image retrieval’. Int. J. Comput. Vision, Stanford, CA, USA, 2000, 40, pp. 99121.
    6. 6)
      • 5. Su, L., Luo, H., Wang, S.: ‘A novel forgery detection algorithm for video foreground removal’, IEEE Access, 2019, 7, pp. 109719109728.
    7. 7)
      • 24. Feng, C., Xu, Z., Jia, S., et al: ‘Motion-adaptive frame deletion detection for digital video forensics’, IEEE Trans. Circuits Syst. Video Technol., 2017, 27, (12), pp. 25432554.
    8. 8)
      • 18. Fadl, S.M., Han, Q., Li, Q.: ‘Inter-frame forgery detection based on differential energy of residue’, IET Image Process., 2019, 13, (3), pp. 522528.
    9. 9)
      • 7. Wei, W., Wang, S., Zhang, X., et al: ‘Estimation of image rotation angle using interpolation-related spectral signatures with application to blind detection of image forgery’, IEEE Trans. Inf. Forensics Sec., 2010, 5, (3), pp. 507517.
    10. 10)
      • 15. Zhang, Z., Hou, J., Li, Z., et al: ‘Inter-frame forgery detection for static-background video based on MVP consistency’, Shi, Y.Q., Kim, H., Perez-Gonzalez, F., Echizen, I. (eds): ‘Digital-Forensics and Watermarking. IWDW 2015’ (LNCS), vol. 9569, 2016, pp. 94106.
    11. 11)
      • 4. D'Amiano, L., Cozzolino, D., Poggi, G., et al: ‘A patchmatch-based dense-field algorithm for video copy-move detection and localization’, IEEE Trans. Circuits Syst. Video Technol., 2019, 29, (3), pp. 669682.
    12. 12)
      • 17. Li, Q., Wang, R., Xu, D.: ‘An inter-frame forgery detection algorithm for surveillance video’, Information, 2018, 9, p. 301.
    13. 13)
      • 9. Li, J., Li, X., Yang, B., et al: ‘Segmentation-based image copy-move forgery detection scheme’, IEEE Trans. Inf. Forensics Sec., 2015, 10, (3), pp. 507518.
    14. 14)
      • 6. Stamm, M.C., Liu, K.J.R.: ‘Forensic detection of image manipulation using statistical intrinsic fingerprints’, IEEE Trans. Inf. Forensics Sec., 2010, 5, (3), pp. 492506.
    15. 15)
      • 2. Lin, C-S., Tsay, J-J.: ‘A passive approach for effective detection and localization of region-level video forgery with spatio-temporal coherence analysis’, Int. J. Digit. Invest., 2014, 11, pp. 120140.
    16. 16)
      • 12. Yang, J., Huang, T., Su, L.: ‘Using similarity analysis to detect frame duplication forgery in videos’, Multimed. Tools Appl., 2016, 75, pp. 17931811.
    17. 17)
      • 21. He, P., Jiang, X., Sun, T., et al: ‘Double compression detection based on local motion vector field analysis in static-background videos’, J. Vis. Commun. Image Represent., 2016, 35, pp. 5566.
    18. 18)
      • 26. Adam, A., Rivlin, E., Shimshoni, I.: ‘Robust fragments-based tracking using the integral histogram’. IEEE Computer Society Conf. on Computer Vision and Pattern Recognition (CVPR'06), New York, NY, USA, 2006, pp. 798805.
    19. 19)
      • 1. Kobayashi, M., Okabe, T., Sato, Y.: ‘Detecting forgery from static-scene video based on inconsistency in noise level functions’, IEEE Trans. Inf. Forensics Sec., 2010, 5, (4), pp. 883892.
    20. 20)
      • 27. Lucas, B.D., Kanade, T.: ‘An iterative image registration technique with an application to stereo vision’. Proc. Int. Joint Conf. Artificial Intelligence, Vancouver, Canada, 1981, pp. 674679.
    21. 21)
      • 23. Aghamaleki, J.A., Behrad, A.: ‘Inter-frame video forgery detection and localization using intrinsic effects of double compression on quantization errors of video coding’, Sig. Process, Image Commun., 2016, 47, (5), pp. 289302.
    22. 22)
      • 19. Thompson, R.: ‘A note on restricted Maximum likelihood estimation with an alternative outlier model’, J. R. Statist. Soc. B, 1985, 47, (1), pp. 5355.
    23. 23)
      • 29. Pang, Y., Ling, H.: ‘Finding the best from the second bests - inhibiting subjective bias in evaluation of visual tracking algorithms’. Proc. IEEE Int. Conf. on Computer Vision (ICCV), Sydney, Australia, 2013, pp. 27842791.
    24. 24)
      • 22. Bestagini, P., Milani, S., Tagliasacchi, M., et al: ‘Codec and GOP identification in double compressed videos’, IEEE Trans. Image Process., 2016, 25, (5), pp. 22982310.
    25. 25)
      • 16. Jia, S., Xu, Z., Wang, H., et al: ‘Coarse-to-fine copy-move forgery detection for video forensics’, IEEE Access, 2018, 6, pp. 2532325335.
    26. 26)
      • 3. Chen, S., Tan, S., Li, B., et al: ‘Automatic detection of object-based forgery in advanced video’, IEEE Trans. Circuits Syst. Video Technol., 2016, 26, (11), pp. 21382151.
    27. 27)
      • 28. Priyadharsini, S., Muneeswaran, K.: ‘Enhanced copy-paste forgery detection in digital images using scale-invariant feature transform’, IET Image Process., 2020, 14, (3), pp. 462471.
    28. 28)
      • 10. Wo, Y., Yang, K., Han, G., et al: ‘Copy–move forgery detection based on multi-radius PCET’, IET Image Process., 2017, 11, (2), pp. 99108.
    29. 29)
      • 13. Ulutas, G., Ustubioglu, B., Ulutas, M., et al: ‘Frame duplication/ mirroring detection method with binary features’, IET Image Process., 2017, 11, (5), pp. 333342.
http://iet.metastore.ingenta.com/content/journals/10.1049/iet-ipr.2020.0287
Loading

Related content

content/journals/10.1049/iet-ipr.2020.0287
pub_keyword,iet_inspecKeyword,pub_concept
6
6
Loading
This is a required field
Please enter a valid email address