A Parallel Watermarking application on a G
Main Article Content
Abstract
Downloads
Article Details
DECLARATION OF ORGINIALITY OF SUBMITTED ARTICLE
With this document, I/We certify that the article submitted for possible publication in the institutional journal INGENIO MAGNO of the Research Center Alberto Magno CIIAM of the University Santo Tomás, Tunja campus, is entirely of my(our) own writing, and is a product of my(our) direct intellectual contribution to knowledge.
All data and references to completed publications are duly identified with their respective bibliographical entries and in the citations thus highlighted. If any adjustment or correction is needed, I(we) will contact the journal authorities in advance.
Due to that stated above, I(we) declare that the entirety of the submitted material is in accordance with applicable laws regarding intellectual and industrial property, and therefore, I(we) hold myself(ourselves) responsible for any complaint related to it.
If the submitted article is published, I(we) declare that I(we) fully relinquish publishing rights of the article to the University Santo Tomás, Tunja campus. As remuneration for this relinquishment of rights, I(we) declare my(our) agreement to receive two (2) copies of the edition of the journal in which my(our) article appears.
References
2. Brunton, A., & Zhao , J. (2006). Real-time video watermarking on programmable graphics hardware. Information Engineering and Computer Sci-ence (ICIECS), 1312 - 1315 .
3. Farber, R. (2011). CUDA Application Design and Development (1st ed.). USA: Morgan Kaufmann.
4. García-Cano, E. (2012). A parallel bioinspired watermarking algorithm on a GPU. Posgrado en Ciencias e Ingeniería de la Computación, UNAM.
5. Mohanty, S., Pati, N., & Kougianos, l. (2007). A Watermarking Co-Processor for New Generation Graphics Processing Units. International Conference on Consumer Electronics, 2007.
6. National Instruments . (2012). Peak Signal-to-Noise Ratio as an Image Quality Metric. Retrieved from http://www.ni.com/white-paper/13306/en
7. NVIDIA. (2010). CUDA Toolkit 4.2 CURAND Guide. (N. Corporation, Ed.)
8. NVIDIA. (2012). NVIDIA CUDA C Programming Guide, version 4.2. (N. Corporation, Ed.)
9. Obukhov, A., & Kharlamov, A. (2008). Discrete Cosine Transform 8x8 Blocks with CUDA. USA: NVIDIA Corporation.
10. Ramesh, S., Shanmugam, A., & Gomathy, B. (2011, February). Comparison and Analysis of Self-Reference Image with Meaningful Image for Robust Watermarking Algorithm based on Visual Quality and Fidelity. International Journal of Computer Applications, 15(5).
11. Sanders, J., & Kandrot, E. (2010). CUDA by example: An Introduction for General Purpose GPU Programming.
12. Shieh, C.-S., Huang, H.-C., Wang, F.-H., & Pan, J.-S. (2004, March). Genetic watermarking based on transform-domain techniques. Pattern Recognition, 37(3).
13. Vihari, P., & Mishra, M. (2012). Image Authentication Algorithm on GPU. 2012 International Conference on Communication Systems and Network , 874 - 878 .
14. Zhao , L., & Yang, J. (2011, March). A High Performance Image Authentication Algorithm on GPU with CUDA. (M. E. Press, Ed.) I. J. Intelligent Systems and Applications, 2, 52-59.