Effective Digital Image Watermarking in YCbCr Color Space Accompanied by Presenting a Novel Technique Using DWT

Authors

  • Mehdi Khalili Institute for Informatics and Automation Problems of NAS RA
  • David Asatryan Institute for Informatics and Automation Problems of NAS RA

Abstract

In this paper, a quantization based watermark casting and blind watermark retrieval algorithm operating in YCbCr color space using discrete wavelet transform (DWT), for ownership verification and image authentication applications is implemented. This method uses implicit visual masking by inserting watermark bits into only the wavelet coefficients of high magnitude, in Y channel of YCbCr color space. A blind watermark retrieval technique that can detect the embedded watermark without the help from the original uncorrupted image is devised which is computationally efficient. The new watermarking algorithm combines and adapts various aspects from existing watermarking methods. Experimental results show that the proposed technique to embed watermark provides extra imperceptibility and robustness against various signal processing attacks in comparison with the same technique in RGB color space.

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Published

2021-12-10

How to Cite

Khalili , M. ., & Asatryan, D. . (2021). Effective Digital Image Watermarking in YCbCr Color Space Accompanied by Presenting a Novel Technique Using DWT. Mathematical Problems of Computer Science, 33, 150–161. Retrieved from http://mpcs.sci.am/index.php/mpcs/article/view/344