Abstract

Prior research studies have shown that the peak signal to noise ratio (PSNR) is the most frequent watermarked image quality metric that is used for determining the levels of strength and weakness of watermarking algorithms. Conversely, normalised cross correlation (NCC) is the most common metric used after attacks were applied to a watermarked image to verify the strength of the algorithm used. Many researchers have used these approaches to evaluate their algorithms. These strategies have been used for a long time, however, which unfortunately limits the value of PSNR and NCC in reflecting the strength and weakness of the watermarking algorithms. This paper considers this issue to determine the threshold values of these two parameters in reflecting the amount of strength and weakness of the watermarking algorithms. We used our novel watermarking technique for embedding four watermarks in intermediate significant bits (ISB) of six image files one-by-one through replacing the image pixels with new pixels and, at the same time, keeping the new pixels very close to the original pixels. This approach gains an improved robustness based on the PSNR and NCC values that were gathered. A neural network model was built that uses the image quality metrics (PSNR and NCC) values obtained from the watermarking of six grey-scale images that use ISB as the desired output and that are trained for each watermarked image’s PSNR and NCC. The neural network predicts the watermarked image’s PSNR together with NCC after the attacks when a portion of the output of the same or different types of image quality metrics (PSNR and NCC) are obtained. The results indicate that the NCC metric fluctuates before the PSNR values deteriorate.

Highlights

  • The quality of an image presentation is improved by image enhancement techniques, which are used to present the best outlook of a captured scene (Zeki and Manaf 2009; Hua et al 2016)

  • Prior research studies have shown that the peak signal to noise ratio (PSNR) is the most frequent watermarked image quality metric that is used for determining the levels of strength and weakness of watermarking algorithms

  • This paper presents an investigation with a neural network (NN) model on the watermarked image quality metric (PSNR and normalised cross correlation (NCC)) values obtained from the watermarking of six grey-scale images using intermediate significant bits (ISB)

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Summary

Background

The quality of an image presentation is improved by image enhancement techniques, which are used to present the best outlook of a captured scene (Zeki and Manaf 2009; Hua et al 2016). To improve the quality of the watermarked image of the bit-plane model, the watermark bits were inserted into the selected bit, and the other seven bits were changed to In this case, the algorithm will respond to any changes within the ranges; for example if the embedded bit is equal to the original bit yk = b and the original pixel is less than 2k−1, which is located in the first range, the watermarked pixel can be obtained from. The ISB method (which chooses the middle of the range to be the location of the watermarked pixel), especially in the first bit-planes that have large values in the range, prove to be an improvement on the LSB technique. The aim is to validate the results obtained after applying the attacks, which shows that the NCC for all attacks was found to be very close to 1, and the PSNR all greater than 30 dB This arrangement reflects a robust watermarking technique with high quality.

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