期刊文献+

基于遗传优化图像稀疏分解的密写算法

A Steganographic Algorithm Based on Image Sparse Decomposition Optimized by GA
在线阅读 下载PDF
导出
摘要 根据超完备字典图像稀疏表示的稀疏性和特征保持性,提出了基于遗传优化图像稀疏分解的密写算法。该密写算法将信息隐藏与基于图像稀疏分解的压缩过程合二为一。首先在基于MP的图像稀疏分解每步迭代中,采用遗传算法快速实现最佳匹配原子的选取;对稀疏分解得到的结果用不同的量化位数进行量化;最后采用LSB嵌入方式将秘密信息隐藏于量化后参数的不同最低有效位中,得到载密图像。实验结果表明,本文提出的基于遗传优化图像稀疏分解的密写算法具有良好的视觉效果,与相同嵌入容量的经典空域和DCT域LSB算法相比,本文的密写算法获得了更高的抵抗隐写分析能力。抗隐写分析实验也表明新的密写算法对嵌入位数不敏感,可灵活地扩充嵌入容量。 Considering the sparsity and integrity of the sparse representation of images over-complete dictionaries,this paper presents a novel image steganographic method with genetic algorithm(GA) based on sparse decomposition.In this method,the data hiding process is integrated into the image sparse compression process.First,in each iteration of the matching pursuit of image sparse decomposition,the best matching atom is selected by GA.Then,the coefficients of sparse decomposition are quantified by different quantization bits.Finally,the stego image is obtained via embedding secret information in the different least significant bits(LSBs) of the quantized coefficients.Experimental results show that the proposed steganographic algorithm maintains good invisibility.Meanwhile,compared to the classical LSB methods of space domain and DCT domain,the new steganography has better ability in resisting steganalysis under the same embedding capacity.Experimental results also indicate that the new steganography is less sensitive to the number of the embedding bits,leading to good expandability in embedding capacity.
出处 《信号处理》 CSCD 北大核心 2012年第6期821-826,共6页 Journal of Signal Processing
基金 国家自然科学基金项目(61171124 61103174) 广东省科技计划项目(2011B010200045) 广东省高校优秀青年创新人才基金(LYM10116)资助 深圳市重点实验室提升项目(CXB201105060068A)
关键词 稀疏分解 匹配追踪 遗传优化 隐写 sparse decomposition matching pursuit genetic optimization steganography
  • 相关文献

参考文献14

  • 1张良,刘宏,吴仁彪,杨国庆.JPEG2000小波域隐写算法[J].信号处理,2007,23(1):27-30. 被引量:4
  • 2石光明,刘丹华,高大化,刘哲,林杰,王良君.压缩感知理论及其研究进展[J].电子学报,2009,37(5):1070-1081. 被引量:721
  • 3朱延万,赵拥军,孙兵.一种改进的稀疏度自适应匹配追踪算法[J].信号处理,2012,28(1):80-86. 被引量:36
  • 4M. Elad, M. Aharon. Image denoising via sparse and re- dundant representations over learned dictionaries [ J ]. IEEE Transactions on Image Processing, 2006,15 ( 12 ) : 3736-3745.
  • 5蔡泽民,赖剑煌.一种基于超完备字典学习的图像去噪方法[J].电子学报,2009,37(2):347-350. 被引量:49
  • 6S. G. Mallat, Z. Zhang. Matching pursuits with time-fre- quency dictionaries [ J ]. IEEE Transactions on Signal Processing, 1993,41 (12) :3397-3415.
  • 7R. R. Coifman, M. V. Wickerhauser. Entropy-based algo- rithms for best basis selection, IEEE Transactions on In- formation Theory, 1992,38 ( 2 ) :713-718.
  • 8S. S. Chen, D. L. Donoho, and M. A. Saunders. Atomic decomposition by basis pursuit[J] SIAM journal on scien- tific computing, 1999,20( 1 ) :33-61.
  • 9J H. Holland. Building blocks, cohort genetic algorithms, and hyperplane-defined functions [ J ]. Evolutionary Com- putation, 2000,8 (g) : 373-391.
  • 10P. Vandergheynst, P. Frossard. Efficient image representa-tion by anisotropic refinement in matching pursuit [ C ]. IEEE International Conference on Acoustics, Speech, and Signal processing,2001,3 : 1757-1760.

二级参考文献120

共引文献800

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部