Towards Optimal Copyright Protection Using Neural Networks Based Digital Image Watermarking

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Mokhtar Hussein, Dr. B. Manjula

Abstract

In the field of digital watermarking, digital image watermarking for copyright protection has attracted a lot of attention in the research community. Digital watermarking contains varies techniques for protecting the digital content. Among all those techniques,Discrete Wavelet Transform (DWT) provides higher image imperceptibility and robustness. Over the years, researchers have been designing watermarking techniques with robustness in mind, in order for the watermark to be resistant against any image processing techniques. Furthermore, the requirements of a good watermarking technique includes a tradeoff between robustness, image quality (imperceptibility) and capacity. In this paper, we have done an extensive literature review for the existing DWT techniques and those combined with other techniques such as Neural Networks. In addition to that, we have discuss the contribution of Neural Networks in copyright protection. Finally we reached our goal in which we identified the research gaps existed in the current watermarking schemes. So that, it will be easily to obtain an optimal techniques to make the watermark object robust to attacks while maintaining the imperceptibility to enhance the copyright protection.

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How to Cite
, M. H. D. B. M. (2017). Towards Optimal Copyright Protection Using Neural Networks Based Digital Image Watermarking. International Journal on Recent and Innovation Trends in Computing and Communication, 5(11), 243 –. https://doi.org/10.17762/ijritcc.v5i11.1307
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