Steganography is the art and science of hiding data within innocent-looking objects (cover objects). Multimedia objects such as images and videos are an attractive type of cover objects due to their high embedding rates. There exist many techniques for performing steganography in both the literature and the practical world. Meanwhile, the definition of the steganographic capacity for multimedia and how to be calculated has not taken full attention. In this paper, for multivariate quantized-Gaussian-distributed multimedia, we study the maximum achievable embedding rate with respect to the statistical properties of cover objects against the maximum achievable performance by any steganalytic detector. Toward this goal, we evaluate the maximum allowed entropy of the hidden message source subject to the maximum probability of error of the steganalytic detector which is bounded by the KL-divergence between the statistical distributions for the cover and the stego objects. We give the exact scaling constant that governs the relationship between the entropies of the hidden message and the cover object.
翻译:图像和视频等多媒体对象因其嵌入率高,是具有吸引力的封面对象类型。在文献和实用世界中,都有许多进行线性摄影的技术。与此同时,多媒体的线性能力定义和如何计算没有引起充分的注意。在本文中,对于多变量量化-Gaussian分布式多媒体,我们研究覆盖对象统计特性方面的最大可实现嵌入率与任何感性探测器所能达到的最大性能之间的关系。为实现这一目标,我们评估隐藏电文源的最大允许通缩度,但须视受KL-调控的显性探测器的最大误差概率而定,该探测器受封面和隐性对象的统计分布和隐性对象之间的误差。我们给出精确的缩放常数,以调节隐藏电文与隐性探测器之间的关系。