A Logarithmic Quantization Index Modulation Data Hiding Using the Wavelet Transform

Jinhua Liu, P. Ye
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引用次数: 1

Abstract

Conventional quantization-based data hiding algorithms used uniform quantization. This scheme may be easily estimated by averaging on a set of embedded signals. Furthermore, by uniform quantization, the perceptual characteristics of the original signal are not considered and the watermark energy is distributed uniformly within the original signal, which introduces visual distortions in some parts of it. Therefore, we introduce a logarithmic quantization-based data hiding method based on the visual model by using the wavelet transform that takes advantage of the properties of Watson's visual model and logarithmic quantization index modulation (LQIM). Its improved robustness is due to embedding in the high energy blocks of original image and by applying the logarithmic scheme. In the detection scheme, we model the wavelet coefficients of image by the generalized Gaussian distribution (GGD). Under this assumption, the bit error probability of proposed method is analytically calculated. Performance of the proposed method is analyzed and verified by simulation. Results of experiments demonstrate the imperceptibility of the proposed method and its robustness.
基于小波变换的对数量化指标调制数据隐藏
传统的基于量化的数据隐藏算法采用均匀量化。这种方案可以很容易地通过对一组嵌入信号进行平均来估计。此外,通过均匀量化,没有考虑原始信号的感知特性,水印能量在原始信号内均匀分布,导致了部分原始信号的视觉失真。因此,我们利用沃森可视化模型和对数量化指数调制(LQIM)的特性,利用小波变换,提出了一种基于可视化模型的对数量化数据隐藏方法。其鲁棒性的提高是由于在原始图像的高能块中进行了嵌入,并采用了对数格式。在检测方案中,采用广义高斯分布(GGD)对图像的小波系数进行建模。在此假设下,解析计算了所提方法的误码概率。通过仿真对该方法的性能进行了分析和验证。实验结果证明了该方法的不可感知性和鲁棒性。
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