ACM Home Page
Please provide us with feedback. Feedback
Improved watermark detection for spread-spectrum based watermarking using independent component analysis
Full text PdfPdf (435 KB)
Source ACM Workshop On Digital Rights Management archive
Proceedings of the 5th ACM workshop on Digital rights management table of contents
Alexandria, VA, USA
SESSION: Watermarking table of contents
Pages: 102 - 111  
Year of Publication: 2005
ISBN:1-59593-230-5
Authors
Hafiz Malik  University of Illinois at Chicago, IL
Ashfaq Khokhar  University of Illinois at Chicago, IL
Rashid Ansari  University of Illinois at Chicago, IL
Sponsors
ACM: Association for Computing Machinery
SIGSAC: ACM Special Interest Group on Security, Audit, and Control
Publisher
ACM  New York, NY, USA
Bibliometrics
Downloads (6 Weeks): 5,   Downloads (12 Months): 72,   Citation Count: 1
Additional Information:

abstract   references   cited by   index terms   collaborative colleagues  

Tools and Actions: Request Permissions Request Permissions    Review this Article  
DOI Bookmark: Use this link to bookmark this Article: http://doi.acm.org/10.1145/1102546.1102564
What is a DOI?

ABSTRACT

This paper presents an efficient blind watermark detection/decoding scheme for spread spectrum (SS) based watermarking, exploiting the fact that in SS-based embedding schemes the embedded watermark and the host signal are mutually independent and obey non-Gaussian distribution. The proposed scheme employs the theory of independent component analysis (ICA) and posed the watermark detection as a blind source separation problem. The proposed ICA-based blind detection/decoding scheme has been simulated using real-world audio clips. The simulation results show that the ICA-based detector can detect and decode watermark with extremely low decoding bit error probability (less than 0.01) against common watermarking attacks and benchmark degradations.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
1
 
2
C.-P. Wu, P.-C. Su, and C.-C. J. Kuo, "Robust Audio Watermarking for Copyright Protection," SPIE's 44th AMASPAAI, 1999.
 
3
H. Malik, A. Khokhar, and R. Ansari, "Robust Audio Watermarking using Frequency Selective Spread Spectrum Theory," Proc. ICASSP'04, Canada, May 2004.
 
4
B. Chen and G. W. Wornell, "Quantization index modulation: A class of provably good methods for digital watermarking and information embedding," IEEE Trans. on Information Theory, vol. 47(4), pp. 1423--1443, May 2001.
 
5
 
6
F. Pérez-González, F. Balado, and J. R. Hernández, "Performance analysis of existing and new methods for data hiding with known-host information in additive channels," IEEE Trans. on Signal Processing, 51(4):960--980, April 2003.
 
7
P. Noll, "MPEG Digital Audio Coding," IEEE Sig. Proc. Mag. vol. 14(5), pp. 59--81, Sep 1997.
 
8
S. Noel, and H. Szu, "Multimedia Authenticity with ICA Watermarks," Wavelet Applications VII, SPIE Proc. vol. 4056, pp. 175--184. April, 2000.
 
9
F. Serrano, and J. Fuentes, "Independent Component Analysis Applied to Digital Image Watermarking," Proc. ICASSP'01, 2001.
 
10
B. Toch, D. Lowe, and D. Saad, "Watermarking of Audio Signals using using Independent Component Analysis," Proc. 3rd Int. Conf. WEB Delivering of Music, 2003.
 
11
S. Bounkong, B. Toch, D. Saad, and D. Lowe, "ICA for Watermarking Digital Images," J. Machine Learning Research 1, pp. 1--25, 2002.
 
12
D. Yu, F. Sattar, and K. Ma, "Watermark Detection and Extraction using Independent Component Analysis," EURASIP J. Applied Signal Processing, pp. 92-104, January 2002.
 
13
 
14
A. Hyvärinen, J. Karhunen, and E. Oja, "Independent Component Analysis," John Wiley & Sons, 2001.
 
15
 
16
 
17
A. Hyvärinen, "Fast independent component analysis with noisy data using gaussian moments," Proc. ISCS'99, 1999.
 
18
 
19
A. Hyvärinen, "Independent Component Analysis in the Presence of Gaussian Noise by Maximizing Joint Likelihood" Neurocomputing, 22:49--67, 1998.
 
20
M. Gaeta, and J.-L. Lacoume, "Source separation without prior knowledge: the maximum likelihood solution," Proc. EUSIPCO'90, pp. 621--624, 1990.
 
21
A. Cichocki, S. Douglas, and S. Amari, "Robust techniques for independent component analysis (ICA) with noisy data," Neurocomputing, vol. 22, pp. 113--129, 1998.
 
22
P. Pajunen., "Blind Separation of Binary Sources with Less Sensors than Sources," Proc. Int. Conf. on Neural Networks (ICNN-97), pp. 1994--1997, 1997.
 
23
M. Zibulevsky, and Y.Y. Zeevi, "Extraction of a single source from multichannel data using sparse decomposition", Neurocomputing, 49, pp 163--173, 2002.
 
24
 
25
P. Comon, "Blind Identification in Presence of Noise," Proc. EUSIPCO'92, pp. 835--838, 1992.
 
26
 
27
É. Moulines, J-F. Cardoso, and E. Gassiat, "Maximum likelihood for blind separation and deconvolution of noisy signals using mixture models," Proc. ICASSP'97, pp. 3617--20, 1997.
 
28
R. Gribonval, L. Benaroya, E. Vincent, and C. Févotte, "Proposals for Performance Measurement in Source Separation," 4th Int. Sym. ICA & BSS (ICA 2003), April, 2003.
 
29
Y. Li, D. Powers, and J. Peach, "Comparison of Blind Source Separation Algorithms," Advances in Neural Networks and Applications, N. Mastorakis (Ed.), WSES, pp. 18--21, 2000
 
30
M. Steinebach, A. Lang, J. Dittmann, and F. A. P. Prtitcolas, "Stirmark Benchmark: Audio Watermarking Attacks based on Lossy Compression," Proc. SPIE Security Watermarking Multimedia, vol. 4675, pp. 79--90, 2002.
 
31
"StirMark Benchmark for Audio", http://amsl-smb.cs.uni-magdeburg.de/smfa/main.php
 
32


Collaborative Colleagues:
Hafiz Malik: colleagues
Ashfaq Khokhar: colleagues
Rashid Ansari: colleagues