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首页> 外文期刊>ACM transactions on multimedia computing communications and applications >A Novel (t, s, k, n)-Threshold Visual Secret Sharing Scheme Based on Access Structure Partition
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A Novel (t, s, k, n)-Threshold Visual Secret Sharing Scheme Based on Access Structure Partition

机译:基于访问结构分区的新型(t,s,k,n) - 阈值秘密共享方案

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摘要

Visual secret sharing (VSS) is a new technique for sharing a binary image into multiple shadows. For VSS, the original image can be reconstructed from the shadows in any qualified set, but cannot be reconstructed from those in any forbidden set. In most traditional VSS schemes, the shadows held by participants have the same importance. However, in practice, a certain number of shadows are given a higher importance due to the privileges of their owners. In this article, a novel (t, s, k, n)-threshold VSS scheme is proposed based on access structure partition. First, we construct the basis matrix of the proposed (t, s, k, n)-threshold VSS scheme by utilizing a new access structure partition method and sub-access structure merging method. Then, the secret image is shared by the basis matrix as n shadows, which are divided into s essential shadows and n - s nonessential shadows. To reconstruct the secret image, k or more shadows should be collected, which include at least t essential shadows; otherwise, no information about the secret image can be obtained. Compared with related schemes, our scheme achieves a smaller shadow size and a higher visual quality of the reconstructed image. Theoretical analysis and experiments indicate the effectiveness of the proposed scheme.
机译:Visual Secret Sharing(VSS)是一种用于将二进制图像分为多个阴影的新技术。对于VSS,可以从任何限定集中的阴影重建原始图像,但不能从任何禁止集中重建的图像。在大多数传统的VSS方案中,参与者持有的阴影具有相同的重要性。然而,在实践中,由于主人的特权,一定数量的阴影是更高的重要性。在本文中,基于访问结构分区提出了一种新颖(t,s,k,n)阈值VSS方案。首先,我们通过利用新的访问结构分区方法和子访问结构合并方法来构造所提出的(T,S,K,N)的基础矩阵 - 阈值VSS方案。然后,秘密图像由基矩阵作为N阴影共享,其被分成S基本阴影和N-S非必要阴影。为了重建秘密图像,应收集k或更多阴影,其包括至少基本阴影;否则,可以获得有关秘密图像的信息。与相关方案相比,我们的方案达到了较小的阴影尺寸和重建图像的高度视觉质量。理论分析和实验表明了拟议计划的有效性。

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