Enhanced state selection Markov model for image splicing detection

Digital image splicing blind detection is becoming a new and important subject in information security area. Among various approaches in extracting splicing clues, Markov state transition probability feature based on transform domain (discrete cosine transform or discrete wavelet transform) seems to be most promising in the state of the arts. However, the up-to-date extraction method of Markov features has some disadvantages in not exploiting the information of transformed coefficients thoroughly. In this paper, an enhanced approach of Markov state selection is proposed, which matches coefficients to Markov states base on well-performed function model. Experiments and analysis show that the improved Markov model can employ more useful underlying information in transformed coefficients and can achieve a higher recognition rate as results.

[1]  Yun Q. Shi,et al.  A natural image model approach to splicing detection , 2007, MM&Sec.

[2]  Alin C. Popescu,et al.  Exposing Digital Forgeries by Detecting Duplicated Image Regions Exposing Digital Forgeries by Detecting Duplicated Image Regions , 2004 .

[3]  Robert D. Nowak,et al.  Wavelet-based statistical signal processing using hidden Markov models , 1998, IEEE Trans. Signal Process..

[4]  H. Farid A Survey of Image Forgery Detection , 2008 .

[5]  Chih-Jen Lin,et al.  LIBSVM: A library for support vector machines , 2011, TIST.

[6]  Ioannis Pitas,et al.  Copyright protection of images using robust digital signatures , 1996, 1996 IEEE International Conference on Acoustics, Speech, and Signal Processing Conference Proceedings.

[7]  Ingemar J. Cox,et al.  Secure spread spectrum watermarking for multimedia , 1997, IEEE Trans. Image Process..

[8]  Jing Dong,et al.  Run-Length and Edge Statistics Based Approach for Image Splicing Detection , 2009, IWDW.

[9]  H. Farid,et al.  Image forgery detection , 2009, IEEE Signal Processing Magazine.

[10]  Wei Su,et al.  Image splicing detection using 2-D phase congruency and statistical moments of characteristic function , 2007, Electronic Imaging.

[11]  Jianhua Li,et al.  Detecting Digital Image Splicing in Chroma Spaces , 2010, IWDW.

[12]  Wang Jing,et al.  Exposing Digital Forgeries by Detecting Traces of Image Splicing , 2006, 2006 8th international Conference on Signal Processing.

[13]  Wei Lu,et al.  Digital image splicing detection based on Markov features in DCT and DWT domain , 2012, Pattern Recognit..

[14]  Ingrid Daubechies,et al.  Ten Lectures on Wavelets , 1992 .