基于最大最小像素差自适应策略的高嵌入容量隐写方法

Pei-Chun Lai, Jau-Ji Shen, Yung-Chen Chou
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引用次数: 0

摘要

在互联网上传输数据的安全性一直是人们非常关心的问题。一种有效的隐写技术旨在隐藏秘密信息,使其在互联网上安全传输,是一个热门的研究课题。本文提出了一种基于图像块中最大像素和最小像素之差值,利用修正最低有效位(LSB)替换策略来隐藏数据的信息隐藏方法。差值将分为三个级别(较低、中、高)。使用Modified LSB替换,较低、中间和较高的级别分别对应于3位、4位和5位嵌入的秘密数据。实验结果表明,该方法的嵌入能力比以往的方法都要大,并且对生成的隐写图像保持了较好的图像质量。
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A High Embedding Capacity Steganographic Method Using Maximum and Minimum pixels Difference Adaptive Strategy
The security of transmitting data over the Internet is always of great concern. As a popular research topic, an efficient steganographic technique aims to hide a secret message for secure transmission over the Internet. In this paper, we propose a new information hiding method based on the difference value between the maximum and minimum pixels in an image block and using Modified Least Significant Bit (LSB) substitution strategy to conceal data. The difference value will be in one of three levels (lower, middle, and higher). Using Modified LSB substitution, the lower, middle, and higher levels correspond to 3-, 4-, and 5-bit embedded secret data, respectively. The experimental results demonstrate that the embedding capacity of the proposed method is greater than previous contributions and maintain a good image quality of stego images that are generated by the proposed method.
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