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Secure halftone image steganography with minimizing the distortion on pair swapping

机译:安全的半色调图像隐写术,可最大程度地减少对交换时的失真

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摘要

In halftone image data hiding, pixel pairs containing master pixels and slave pixels are common operating units. In most previous researches, master pixels are selected at a set of pseudo-random locations, which degrade the image quality. In this paper, a secure halftone image steganographic scheme based on pair swapping is presented, which aims at minimizing the embedding distortions. Different from most previous researches, there is no master-slave relationship in the proposed scheme and the steganographic performance depends on the selection of pixel pairs instead of slave pixels. Based on a human visual system (HVS) model of halftone images, the superiority of pair swapping is proved and vertical swapping is further demonstrated to be the optimal way to improve visual quality among all pair swapping strategies. Finally, a statistical model is developed to predict the vertical pair pattern by considering its neighboring region, based on which, a distortion measurement is proposed to evaluate the embedding distortions on both vision and statistics. To play the advantage of the distortion measurement, syndrometrellis code (STC) is employed to minimize the embedding distortions. Experimental results show that the proposed steganographic scheme achieves high statistical security with high embedding capacity without degrading the visual quality. (C) 2019 Elsevier B.V. All rights reserved.
机译:在半色调图像数据隐藏中,包含主像素和从像素的像素对是常见的操作单位。在大多数先前的研究中,在一组伪随机位置选择主像素,这会降低图像质量。本文提出了一种基于对交换的安全半色调图像隐写方案,旨在最小化嵌入失真。与大多数以前的研究不同,该方案中没有主从关系,并且隐写性能取决于选择的像素对而不是从属像素。在半色调图像的人类视觉系统(HVS)模型的基础上,证明了线对互换的优越性,并且进一步证明了垂直互换是提高所有线对互换策略中视觉质量的最佳方法。最后,开发了一个统计模型,通过考虑垂直对图案的相邻区域来预测垂直对图案,在此基础上,提出了一种变形测量方法,以评估视觉和统计上的嵌入变形。为了发挥失真测量的优势,采用了校正子码(STC)来最小化嵌入失真。实验结果表明,该隐秘方案在不降低视觉质量的前提下,具有较高的统计安全性和较高的嵌入能力。 (C)2019 Elsevier B.V.保留所有权利。

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