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A Novel Blind Digital Watermarking Based on SVD and Extreme Learning Machine


Affiliations
1 Computer Science Department, University of Delhi, Delhi, India
2 Computer Science Department, DDUC, University of Delhi, Delhi, India
3 Computer Science Department, BNC, University of Delhi, Delhi, India
 

Modification of media and illegal production is a big problem now a days because of free availability of digital media. Protection and securing the digital data is a challenge. An Integer Wavelet Transformation (IWT) domain based robust watermarking scheme with Singular Value Decomposition (SVD) and Extreme Learning Machine (ELM) have been proposed and tested on different images. In this proposed scheme, a watermark or logo is embedded in the IWT domain as ownership information with SVD and ELM is trained to learn the relationship between the original coefficient and the watermarked one. This trained ELM is used in the extraction process to extract the embedded logo from the image. Experimental results show that the proposed watermarking scheme is robust against various image attacks like Blurring, Noise, Cropping, Rotation, Sharpening etc. Performance analysis of proposed watermarking scheme is measured with Peak Signal to Noise Ratio (PSNR) and Bit Error Rate (BER).

Keywords

IWT, SVD, ELM, PSNR, BER.
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  • A Novel Blind Digital Watermarking Based on SVD and Extreme Learning Machine

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Authors

Neelam Dabas
Computer Science Department, University of Delhi, Delhi, India
Rampal Singh
Computer Science Department, DDUC, University of Delhi, Delhi, India
Vikash Chaudhary
Computer Science Department, BNC, University of Delhi, Delhi, India

Abstract


Modification of media and illegal production is a big problem now a days because of free availability of digital media. Protection and securing the digital data is a challenge. An Integer Wavelet Transformation (IWT) domain based robust watermarking scheme with Singular Value Decomposition (SVD) and Extreme Learning Machine (ELM) have been proposed and tested on different images. In this proposed scheme, a watermark or logo is embedded in the IWT domain as ownership information with SVD and ELM is trained to learn the relationship between the original coefficient and the watermarked one. This trained ELM is used in the extraction process to extract the embedded logo from the image. Experimental results show that the proposed watermarking scheme is robust against various image attacks like Blurring, Noise, Cropping, Rotation, Sharpening etc. Performance analysis of proposed watermarking scheme is measured with Peak Signal to Noise Ratio (PSNR) and Bit Error Rate (BER).

Keywords


IWT, SVD, ELM, PSNR, BER.

References





DOI: https://doi.org/10.13005/ojcst%2F10.01.21