数字图像隐写术中空间域技术的有效性

Rosshini Selvamani, Yusliza Yusoff
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引用次数: 0

摘要

数字隐写术是一种全新的、要求极高的通过互联网安全传输信息的方法,同时使用一种隐蔽装置。自 20 世纪 90 年代诞生至今,数字隐写术已有很长的历史。早期的隐写术主要侧重于不可感知性、安全性和嵌入能力。除了使用统计学作为基础外,卷积神经网络(CNN)、生成对抗网络(GAN)、无掩盖方法和机器学习都被用来构建隐写方法。鲁棒性正成为许多创新技术的重要组成部分。空间域、变换域和自适应域是这些新方法的基础结构。这拓宽了隐写技术的发展范围,并往往集中于自适应技术的实施。因此,本研究有助于分析图像隐写术的基本原理,对空间域算法进行比较审查。由于使用评估工具与隐写术的有效性密切相关,本研究还对其应用进行了深入探讨。本研究的目的是在三种具有竞争力的空间域算法中确定最佳和最有效的算法,这三种算法是最小有效位算法(LSB)、最佳像素调整程序算法(OPAP)和像素值差分算法(PVD)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effectiveness of the Spatial Domain Techniques in Digital Image Steganography
Digital steganography is a new and extremely demanding method for transmitting information securely over the internet while employing a covert device. Since its inception in the 1990s till the present, digital steganography has a lengthy history. Early steganography focused primarily on imperceptibility, security and embedding capacity. In addition to using statistics as a foundation, convolution neural networks (CNN), generative adversarial networks (GAN), coverless approaches, and machine learning are all used to construct steganographic methods. Robustness is becoming a crucial component of many innovative techniques. Spatial, Transform, and Adaptive domains serve as the understructure of those novel methods. This broadens the range of steganographic technique development and often concentrates the implementation of adaptive techniques. As a result, this study helps to analyze the fundamentals of image steganography, a comparative review on the spatial domain algorithms. As using evaluation tools is strongly tied to the effectiveness of steganography, this study also goes into great detail about its application. The purpose of this research is to determine the best and most effective algorithm among the three competitive spatial domain algorithms, which are Least Significant Bit (LSB), Optimum Pixel Adjustment Procedure (OPAP), and Pixel Value Differencing (PVD) which in regard demonstrated the efficacy of spatial domain algorithms.
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