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In recent years digital watermarking has gained substantial attraction by the research
community. It promises the solution to many problems such as content piracy, illicit
manipulation of medical/legal documents, content security and so on. Watermarked
content is usually vulnerable to a series of attacks in real world scenario. These attacks
may be legitimate, such as common signal processing operations, or illegitimate, such as
a malicious attempt by an attacker to remove the watermark. A low strength watermark
usually possesses high imperceptibility but weak robustness and vice versa. On the other
hand, different set of attacks are associated with distinctive watermarking applications,
which pose different requirements on a watermarking scheme. Therefore, intelligent
approaches are needed to adaptively and judiciously structure the watermark in view of
the current application.
In addition, traditional watermarking techniques cause irreversible degradation of an
image. Although the degradation is perceptually insignificant, it may not be admissible in
applications like medical, legal, and military imagery. For applications such as these, it is
desirable to extract the embedded information, as well as recover the sensitive host
image. This leads us to the use of reversible watermarking. An efficient reversible
watermarking scheme should be able to embed more information with less perceptual
distortion, and equally, be able to restore the original cover content. Therefore, for
reversible watermarking, capacity and imperceptibility are two important properties.
However, if one increases the other decreases and vice versa. Hence, one needs to make
an optimum choice between these two properties for reversible watermarking.
5The research in this work is two-fold. Firstly, we develop intelligent systems for
making optimum robustness versus imperceptibility tradeoffs. The performance of the
existing watermarking approaches is not up to the task when we consider watermark
structuring in view of a sequence of attacks, which is much desirous in real world
applications. In order to resist a series of attacks, we employ intelligent selection of both
the frequency band as well as strength of alteration for watermark embedding using
Genetic Programming. To further enhance the robustness of the watermarking system,
Support Vector Machines and Artificial Neural Networks are applied to adaptively
modify the decoding strategy in view of the anticipated sequence of attacks at the
watermark extraction phase.
Secondly, we devise an intelligent system capable of making optimum/ near
optimum tradeoff between watermark payload and imperceptibility. In the context of
reversible watermarking, we propose an intelligent scheme which selects suitable
coefficients in different wavelet sub-bands and yields superior capacity versus
imperceptibility tradeoff. Experimental results show that machine learning approaches
are very promising in state of the art watermarking applications. |
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