Title :
ART2-based genetic watermarking
Author :
Chang, Ying-Lan ; Sun, Koun-Tem ; Chen, Yueh-Hong
Author_Institution :
Inst. for Comput. Sci. & Inf. Educ., Nat. Univ. of Tainan, Taiwan
Abstract :
A genetic watermarking approach based on ART2 neural network is proposed in the paper. This approach uses an ART2 neural network to classify 8×8 DCT blocks of images in training sets. For each cluster, genetic algorithm (GA) is then performed to find out the optimal coefficients for watermark embedding. All the results are recorded in a table, called optimal position table (OPT). According to the OPT table, the coefficients for watermark embedding can be decided straightforward. Two features of the proposed approach make itself a suitable enhancement for genetic watermarking. First, it has the ability to keep and refine the results obtained from genetic watermarking. Second, the proposed method greatly increases the speed of genetic watermarking so that genetic watermarking can be used in practice. The experimental results shows that the watermarked images are perceptually equal to the originals, and that the watermarks are still detectable after low pass filtering, high pass filtering and JPEG compression.
Keywords :
data compression; discrete cosine transforms; genetic algorithms; high-pass filters; image coding; learning (artificial intelligence); low-pass filters; neural nets; watermarking; ART2 neural network; DCT blocks; JPEG compression; genetic algorithm; genetic watermarking; high pass filtering; low pass filtering; optimal position table; watermark embedding; Computer science; Constraint optimization; Discrete cosine transforms; Genetic algorithms; Internet; Neural networks; Optimized production technology; Robustness; Sun; Watermarking;
Conference_Titel :
Advanced Information Networking and Applications, 2005. AINA 2005. 19th International Conference on
Print_ISBN :
0-7695-2249-1
DOI :
10.1109/AINA.2005.122