Video steganography techniques: Taxonomy, challenges, and future directions

Ramadhan J. Mstafa, K. Elleithy, Eman Abdelfattah
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引用次数: 32

Abstract

Nowadays, video steganography has become important in many security applications. The performance of any steganographic method ultimately relies on the imperceptibility, hiding capacity, and robustness. In the past decade, many video steganography methods have been proposed; however, the literature lacks of sufficient survey articles that discuss all techniques. This paper presents a comprehensive study and analysis of numerous cutting edge video steganography methods and their performance evaluations from literature. Both compressed and raw video steganographic methods are surveyed. In the compressed domain, video steganographic techniques are categorized according to the video compression stages as venues for data hiding such as intra frame prediction, inter frame prediction, motion vectors, transformed and quantized coefficients, and entropy coding. On the other hand, raw video steganographic methods are classified into spatial and transform domains. This survey suggests current research directions and recommendations to improve on existing video steganographic techniques.
视频隐写技术:分类、挑战和未来方向
如今,视频隐写技术在许多安防应用中发挥着重要作用。任何隐写方法的性能最终取决于其不可感知性、隐藏能力和鲁棒性。在过去的十年里,人们提出了许多视频隐写方法;然而,文献缺乏足够的调查文章,讨论所有的技术。本文从文献中对许多前沿的视频隐写方法及其性能评价进行了全面的研究和分析。对压缩和原始视频隐写方法进行了研究。在压缩领域,将视频隐写技术分为帧内预测、帧间预测、运动矢量、变换和量化系数、熵编码等作为数据隐藏场所的视频压缩阶段。另一方面,原始视频隐写方法分为空间域和变换域。本文提出了当前的研究方向和改进现有视频隐写技术的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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