各种数字图像水印技术的比较研究——以混合水印为例

M. Pandey, Sushma Jaiswal
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引用次数: 0

摘要

数字安全是当今时代的重要方面之一。互联网上的数字内容每天都在增长;因此,利用各种技术保护数字内容的版权是至关重要的。水印技术已成为一个重要的研究领域,旨在保护数字内容和版权。没有一种水印技术能够提供对所有攻击的良好鲁棒性,并且算法是基于所需的规范设计的,这意味着在这个领域有很多机会。图像水印是一个广阔的研究领域,从基于空间的方法到基于深度学习的方法,最近由于深度学习技术的介入,以确保数字内容的安全,图像水印得到了广泛的应用。本研究旨在探索从空间到深度学习的水印方法的重要亮点,这将对研究人员有所帮助。为了完成这项研究,从各种数据库中获得了过去十年的标准研究论文,并对其进行了审查,以回答五个研究问题。在回顾了各种文献后,确定并列出了悬而未决的问题和挑战。我们的研究表明,混合水印在平衡不可见性和鲁棒性之间的权衡方面表现得更好。并对当前的研究趋势和未来的发展方向进行了讨论。
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A comparative study of various digital image watermarking techniques: Specific to hybrid watermarking
Digital security is one of the important aspects of today’s era. Digital content is being grown every day on the internet; therefore, it is essential to guard the copyright of digital content using various techniques. Watermarking has emerged as an important field of study aiming at securing digital content and copyright protection. None of the watermarking techniques can provide well robustness against all the attacks, and algorithms are designed based on required specifications, which means there is a lot of opportunity in this field. Image watermarking is a vast area of research, starting from spatial-based methods to deep learning-based methods, and it has recently gained a lot of popularity due to the involvement of deep learning technology for ensuring the security of digital content. This study aims at exploring important highlights from spatial to deep learning methods of watermarking, which will be helpful for the researchers. In order to accomplish this study, the standard research papers of the last ten years have been obtained from various databases and reviewed to answer the five research questions. Open issues and challenges are identified and listed after reviewing various kinds of literature. Our study reveals that hybrid watermarking performs better in terms of balancing the trade-off between imperceptibility and robustness. Current research trends and future direction is also discussed.
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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