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Edge Adaptive Image Steganography Based on LSB Matching Revisited

机译:基于LSB匹配的边缘自适应图像隐写技术

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The least-significant-bit (LSB)-based approach is a popular type of steganographic algorithms in the spatial domain. However, we find that in most existing approaches, the choice of embedding positions within a cover image mainly depends on a pseudorandom number generator without considering the relationship between the image content itself and the size of the secret message. Thus the smooth/flat regions in the cover images will inevitably be contaminated after data hiding even at a low embedding rate, and this will lead to poor visual quality and low security based on our analysis and extensive experiments, especially for those images with many smooth regions. In this paper, we expand the LSB matching revisited image steganography and propose an edge adaptive scheme which can select the embedding regions according to the size of secret message and the difference between two consecutive pixels in the cover image. For lower embedding rates, only sharper edge regions are used while keeping the other smoother regions as they are. When the embedding rate increases, more edge regions can be released adaptively for data hiding by adjusting just a few parameters. The experimental results evaluated on 6000 natural images with three specific and four universal steganalytic algorithms show that the new scheme can enhance the security significantly compared with typical LSB-based approaches as well as their edge adaptive ones, such as pixel-value-differencing-based approaches, while preserving higher visual quality of stego images at the same time.
机译:基于最低有效位(LSB)的方法是空间领域中一种流行的隐秘算法。但是,我们发现,在大多数现有方法中,在封面图像中嵌入位置的选择主要取决于伪随机数生成器,而不考虑图像内容本身与秘密消息大小之间的关系。因此,即使以低嵌入率隐藏数据后,封面图像中的平滑/平坦区域也将不可避免地受到污染,并且根据我们的分析和广泛的实验,这将导致较差的视觉质量和较低的安全性,尤其是对于那些平滑程度较高的图像地区。在本文中,我们扩展了LSB匹配再访问图像隐写术,并提出了一种边缘自适应方案,该方案可以根据秘密消息的大小和封面图像中两个连续像素之间的差异来选择嵌入区域。对于较低的嵌入率,仅使用较尖锐的边缘区域,同时保持其他较平滑的区域不变。当嵌入率增加时,只需调整几个参数,就可以自适应释放更多的边缘区域以隐藏数据。使用三种特定的和四种通用隐写分析算法对6000张自然图像进行的实验结果表明,与基于LSB的典型方法以及基于像素值差分的边缘自适应方法相比,该新方法可以显着提高安全性。的方法,同时保留较高的隐身图像视觉质量。

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