RETRACTED ARTICLE: Hybrid domain watermarking technique for copyright protection of images using speech watermarks

When digital images are shared over an open access network such as the internet, facebook, WhatsApp, and other social media, then the security of these images are required. The digital watermarking is one approach for the security of images (e.g. copyright protection, ownership authentication). In m...

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Veröffentlicht in:Journal of ambient intelligence and humanized computing 2020-05, Vol.11 (5), p.1835-1857
Hauptverfasser: Thanki, Rohit M., Kothari, Ashish M.
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Kothari, Ashish M.
description When digital images are shared over an open access network such as the internet, facebook, WhatsApp, and other social media, then the security of these images are required. The digital watermarking is one approach for the security of images (e.g. copyright protection, ownership authentication). In most of the watermarking approaches, secret information such as owner binary logos and texts are used for protection of images. These days, biometric watermarks such as human speech signals are preferred for protection of images. In this paper, a watermarking technique based on various signal processing transforms is proposed and implemented for the security of image using human speech signal. In this technique, the first discrete cosine transform (DCT) and then singular value decomposition (SVD) are applied on the watermark speech signal to get its hybrid coefficients which are inserted into hybrid coefficients of the cover image to get a watermarked image. These hybrid coefficients of cover image are first generated using discrete wavelet transform (DWT) and then fast discrete curvelet transform (FDCuT) is applied on it. The performance of techniques is tested for standard speech database such as TIMIT in terms of imperceptibility, robustness and payload capacity. The experimental results and comparison show that the proposed watermarking technique performs better than the existing watermarking techniques available in the literature. This technique may also be used for security of speech signal against spoof attack.
doi_str_mv 10.1007/s12652-019-01295-1
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The digital watermarking is one approach for the security of images (e.g. copyright protection, ownership authentication). In most of the watermarking approaches, secret information such as owner binary logos and texts are used for protection of images. These days, biometric watermarks such as human speech signals are preferred for protection of images. In this paper, a watermarking technique based on various signal processing transforms is proposed and implemented for the security of image using human speech signal. In this technique, the first discrete cosine transform (DCT) and then singular value decomposition (SVD) are applied on the watermark speech signal to get its hybrid coefficients which are inserted into hybrid coefficients of the cover image to get a watermarked image. These hybrid coefficients of cover image are first generated using discrete wavelet transform (DWT) and then fast discrete curvelet transform (FDCuT) is applied on it. The performance of techniques is tested for standard speech database such as TIMIT in terms of imperceptibility, robustness and payload capacity. The experimental results and comparison show that the proposed watermarking technique performs better than the existing watermarking techniques available in the literature. 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subjects Artificial Intelligence
Biometrics
Coefficients
Computational Intelligence
Copy protection
Copyright
Data encryption
Digital imaging
Digital media
Digital watermarking
Discrete cosine transform
Discrete Wavelet Transform
Engineering
Fourier transforms
Logos
Optimization techniques
Original Research
Robotics and Automation
Security
Signal processing
Singular value decomposition
Social networks
Speech
User Interfaces and Human Computer Interaction
Wavelet transforms
title RETRACTED ARTICLE: Hybrid domain watermarking technique for copyright protection of images using speech watermarks
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