DIGITAL IMAGE WATERMARKING ALGORITHMS BASED ON DUAL TRANSFORM DOMAIN AND SELF-RECOVERY

Publications

Share / Export Citation / Email / Print / Text size:

International Journal on Smart Sensing and Intelligent Systems

Professor Subhas Chandra Mukhopadhyay

Exeley Inc. (New York)

Subject: Computational Science & Engineering, Engineering, Electrical & Electronic

GET ALERTS

eISSN: 1178-5608

DESCRIPTION

7
Reader(s)
13
Visit(s)
0
Comment(s)
0
Share(s)

VOLUME 8 , ISSUE 1 (March 2015) > List of articles

DIGITAL IMAGE WATERMARKING ALGORITHMS BASED ON DUAL TRANSFORM DOMAIN AND SELF-RECOVERY

Zhu Yuefeng / Lin Li

Keywords : Stay cable, positive pressure arch effect, mechanism, friction coefficient, ANSYS, contact analysis.

Citation Information : International Journal on Smart Sensing and Intelligent Systems. Volume 8, Issue 1, Pages 199-219, DOI: https://doi.org/10.21307/ijssis-2017-755

License : (CC BY-NC-ND 4.0)

Received Date : 27-October-2014 / Accepted: 09-January-2015 / Published Online: 01-March-2015

ARTICLE

ABSTRACT

In view of dual watermarking algorithm for dual two value image watermarking, the watermark information there is a gray image watermarking in the expression is obviously insufficient. The proposed embedded in the carrier image on the dual watermark includes a two watermark image and a gray image watermarking algorithm, the persuasive power while maintaining the original two values of the watermark robustness at the same time, improve the watermark information. In order to balance the robustness and invisibility of watermarking algorithm, this paper analyzes the embedding position and strategy of transform domain algorithms, the DC coefficient in the carrier image is divided into blocks of DCT spectrum and spectrum on the combination of DWT coefficient method and the advantage of embedded dual watermarking, and use the NEC characteristic of the algorithm is improved adaptive based on the embedded mode. The gray image watermark bit plane decomposition compression high four bit plane information as watermarking, in reducing the original watermark loading and enhance the overall strength of self recovery system. This paper from the working principle,
classification of digital watermarking, attack types, performance index, evaluation method and uses six aspects were introduced to the digital watermarking technology. Simulation study of a digital image watermarking algorithm based on DCT transform and Arnold transform, the algorithm's imperceptibility, robustness and security are analyzed, the algorithm for embedding process.

Content not available PDF Share

FIGURES & TABLES

REFERENCES

[1] Ashdown M., Flagg M., Sukthankar R., and Rehg J.M., A Flexible Projector-Camera System for
Multi-Planar Displays, Computer Vision and Pattern Recognition (CVPR), pp. II-165 - II-172, 2014.
[2] Brown M.S. and Seales W. A Practical and Flexible Tiled Display System 10th Pacific Conference
on Computer Graphics and Applications (PG'02), pp. 194 – 203, 2002.
[3] Valizadeh, S.A. ; Ghassemian, H, Remote sensing image fusion using combining IHS and Curvelet
transform, 2012 Sixth International Symposium on Telecommunications (IST), pp.1184 - 1189, 2012.
[4] Starck J L, Candès E J, Donoho D L. The curvelet transform for image denoising, IEEE Trans. on
Image Proc,vol. 6, no. 11, pp. 131-141, 2002.
[5] Pure, A.A. ; Gupta, N. ; Shrivastava, M., Wavelet and fast discrete curvelet transform for medical
application,2013 Fourth International Conference on Computing, Communications and Networking
Technologies (ICCCNT), pp.1-5, 2013.
[6] Garcia-Dorado Ignacio, Cooperstock Jeremy, Fully Automatic Multi-Projector Calibration with An
Uncalibrated Camera, IEEE Computer Society Conference on Computer Vision and Pattern
Recognition Workshops, pp.29 - 36, 2011.
[7] Chen H., Sukthankar R., Wallace G., and Li K., Scalable Alignment of Large-Format Multi-Projector
Displays Using Camera Homography Trees. Proceedings of IEEE Visualization, pp. 339-346, 2012.
[8] Bobles W. W. A human identification technique using image of the iris and wavelet transform, IEEE
Transaction on Signal Processing. Vol. 46, no.4, pp. 11 85-1188, 1998.
[9] Aguirre-Dobernack N., Guzman-Miranda H., Aguirre M.A, Implementation of a machine vision
system for real-time traffic sign recognition on FPGA, 39th Annual Conference of the IEEE
Industrial Electronics Society, pp.2285 - 2290, 2013..
[10] Raskar R., van Baar J., and Beardsley P., Display Grid: Ad-Hoc Clusters of Autonomous Projectors.
Journal of the Society for Information Display, vol.12, no.4, pp. 389–396, 2004.
[11] Eusuff M M, Lansey K E, "Optimization of Water Distribution Network Design Using the Shuffled
Frog Leaping Algorithm", Water Resources Planning and Management, vol.129, no.3, pp. 210-225,
2003.
[12] M. Iwahara, S.C. Mukhopadhyay, S. Yamada and F.P. Dawson, "Development of Passive Fault
Current Limiter in Parallel Biasing Mode", IEEE Transactions on Magnetics, Vol. 35, No. 5, pp
3523-3525, September 1999.
[13] Amiri B, Fathian M, Maroosi A, "Application of Shuffled Frog Leaping Algorithm On Clustering",
The International Journal of Advanced Manufacturing Technology, vol.45, no.1/2, pp.199- 209, 2009.
[14] Ghahremani, M.; Ghassemian, H.; Ghahremani, M.; Ghassemian, H, Remote Sensing Image Fusion
Using Ripplet Transform. and Compressed Sensing, Geoscience and Remote Sensing Letters, vol. 12,
no.3, pp.502-506, 2015.
[15] Alireza R V, Ali H M, "Solving A Bicriteria Permutation Flow Shop Problem Using Shuffled Frog-
Leaping Algorithm", Soft Computing, vol.12, no.5,,pp.435-452, 2008.
[16] Sun, Wei et al., A fast color image enhancement algorithm based on Max Intensity Channel, Journal
of Modern Optics, vol. 61, issue 6, pp. 466-477, 2014.
[17] G. Sen Gupta, S.C. Mukhopadhyay, Michael Sutherland and Serge Demidenko, Wireless Sensor
Network for Selective Activity Monitoring in a home for the Elderly, Proceedings of 2007 IEEE
IMTC conference, Warsaw, Poland, (6 pages).
[18] Li Jian, Pan Qing, Yang Tian. "Color Based Grayscale-fused Image Enhancement Algorithm for
Video Surveillance", In Proceeding of the third international conference on image and graphics, pp.
47-50, 2004.
[19] S.C.Mukhopadhyay, S. Deb Choudhury, T. Allsop, V. Kasturi and G. E. Norris, “Assessment of pelt
quality in leather making using a novel non-invasive sensing approach”, Journal of Biochemical and
Biophysical methods, Elsevier, JBBM Vol. 70, pp. 809-815, 2008.
[20] Nencini F, Garzelli A, Baronti S, Alparone L. "Remote sensing image fusion using the curvelet
transform", Inf. Fusion, vol. 26, no. 5, pp. 657-662, 2006.
[21] N.K.Suryadevara, A. Gaddam, R.K.Rayudu and S.C. Mukhopadhyay, “Wireless Sensors Network
based safe Home to care Elderly People: Behaviour Detection”, Sens. Actuators A: Phys. (2012),
doi:10.1016/j.sna.2012.03.020, Volume 186, 2012, pp. 277 – 283.
[22] Kang Mu, Wang Baoshu,An Adaptive Color Image Enhancement Algorithm Based on Human
Visual Properties, Acta Optica Sinica,vol.9, pp. 3018-3024, 2009.
[23] G. Sen Gupta, S.C.Mukhopadhyay, S. Demidenko and C.H.Messom, “Master-slave Control of a
Teleoperated Anthropomorphic Robotic Arm with Gripping Force Sensing”, IEEE Transactions on
Instrumentation and Measurement, Vol. 55, No. 6, pp. 2136-2145, December 2006.
[24] Yanmin LUO, Peizhong LIU and Minghong LIAO, An artificial immune network clustering
algorithm for mangroves remote sensing, International Journal on Smart Sensing and Intelligent
Systems, VOL. 7, NO. 1, pp. 116 – 134, 2014.

EXTRA FILES

COMMENTS