利用邻域像素信息的灰度数字图像可变速率隐写

Moazzam Hossain, Sadia Al Haque, Farhana Sharmin
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引用次数: 64

摘要

为了使隐写图像具有不易察觉的质量,提高隐写图像的安全性,本文提出了三种不同的灰度级图像隐写方法。我们的方案采用了四邻、对角邻和八邻方法。这些方法利用像素对其邻域的依赖性和心理视觉冗余来确定图像中的平滑区域和边缘区域。在平滑区域,我们嵌入三位秘密信息。在边缘区域,嵌入可变速率比特。从实验结果可以看出,尽管在图像中隐藏了大量的秘密比特,但所提出的方法具有较高的峰值信噪比(PSNR),从而获得了更高的视觉质量。此外,要嵌入如此大量的秘密信息,最多只需要使用图像中总像素数的一半。此外,秘密信息的提取不依赖于原始封面图像。
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Variable rate Steganography in gray scale digital images using neighborhood pixel information
In order to improve the security by providing the stego image with imperceptible quality, three different steganographic methods for gray level images are presented in this paper. Four Neighbors, Diagonal Neighbors and Eight Neighbors methods are employed in our scheme. These methods utilize a pixel's dependency on its neighborhood and psycho visual redundancy to ascertain the smooth areas and edged areas in the image. In smooth areas we embed three bits of secret information. In the edged areas, variable rate bits are embedded. From the experimental results it is seen that the proposed methods achieve a much higher visual quality as indicated by the high Peak Signal-to-Noise Ratio (PSNR) in spite of hiding a larger number of secret bits in the image. In addition, to embed this large amount of secret information, at most only half of the total number of pixels in an image is used. Moreover, extraction of the secret information is independent of original cover image.
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