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bayesian classifier
Digital Video
Expectation Maximization Algorithm
Mixture Model
Wavelet Transform
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Detecting logo-removal forgery by inconsistencies of blur
Detecting logo-removal forgery by inconsistencies of blur,10.1109/ICIMA.2009.5156553,Jing Zhang,Yuting Su
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Detecting logo-removal forgery by inconsistencies of blur
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Citations: 1
)
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Jing Zhang
,
Yuting Su
A new approach for detecting video logo-removal forgery is proposed by measuring inconsistencies of blur. Our approach is based on the assumption that if a
digital video
undergoes logo-removal forgery; the blurriness value of the forged region is expected to be different as compared to the non-tampered parts of the video. Blurriness is estimated by the regularity properties in the wavelet domain which involves measuring the decay of
wavelet transform
coefficients across scales. The distribution of blurriness value in a forged video is modeled as a GMM (Gauss mixture model). The EM (Expectation-Maximization) algorithm is employed to estimate the model parameters. Consequently, a
Bayesian classifier
is used to find the optimal threshold value. Experimental results show that our approach achieves promising accuracy in logo-removal forgery detection.
Conference:
International Conference on Innovation Management - ICIM
, 2009
DOI:
10.1109/ICIMA.2009.5156553
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Citation Context
(1)
...Others [9], [13]–[
16
] use discrepancies in defocus blur to discover forgeries...
...In another work [
16
], the authors proposed a method intended for highly localized blur and mentioned that it is not suitable for motion blur...
Pravin Kakar
,
et al.
Exposing Digital Image Forgeries by Detecting Discrepancies in Motion ...
References
(8)
Video forgery detection using correlation of noise residue
(
Citations: 10
)
Chih-chung Hsu
,
Tzu-yi Hung
,
Chia-wen Lin
,
Chiou-ting Hsu
Conference:
Multimedia Signal Processing - MMSP
, pp. 170-174, 2008
Exposing Digital Forgeries in Interlaced and Deinterlaced Video
(
Citations: 12
)
Weihong Wang
,
Hany Farid
Journal:
IEEE Transactions on Information Forensics and Security
, vol. 2, no. 3-1, pp. 438-449, 2007
Exposing digital forgeries in video by detecting duplication
(
Citations: 21
)
Weihong Wang
,
Hany Farid
Conference:
Multimedia & Security - MM&Sec
, pp. 35-42, 2007
Exposing digital forgeries in video by detecting double MPEG compression
(
Citations: 25
)
Weihong Wang
,
Hany Farid
Conference:
Multimedia & Security - MM&Sec
, pp. 37-47, 2006
Erasing video logos based on image inpainting
(
Citations: 12
)
Wei-Qi Yan
,
Mohan S. Kankanhalli
Conference:
International Conference on Multimedia Computing and Systems/International Conference on Multimedia and Expo - ICME(ICMCS)
, 2002
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Citations
(1)
Exposing Digital Image Forgeries by Detecting Discrepancies in Motion Blur
Pravin Kakar
,
N. Sudha
,
Wee Ser
Journal:
IEEE Transactions on Multimedia - TMM
, vol. 13, no. 3, pp. 443-452, 2011