用于隐写信息提取的高维统计监督学习

Sunjun Hwang, K. Kim, Yejin Kim, Junhui Kim, Mi‐seong Park, Soohyun Park, Joongheon Kim
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引用次数: 0

摘要

如何在图像文件失真的情况下避免信息丢失是数字隐写技术的一个重要研究课题。图像失真可能导致键值失真,最终导致从失真图像中获取正确信息变得非常困难。因此,本文提出了一种基于高维回归的监督学习对给定图像进行编码和解码的方案。该方法将多个原始消息嵌入到一个文件中;而基于高维回归的监督学习则从多个原始消息中精确提取最终消息,其中每个原始消息与最终消息不相同。在这种情况下,如果攻击者从图像中读取一些消息,则很难提取我们的最终消息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-dimensional statistical supervised learning for extracting information in steganography
One of major research topics in digital steganography is the methods which can avoid information loss while the image files experience distortion. The image distortion may lead to the key value distortion, and eventually, it becomes very hard to get correct information from the distorted images. Therefore, this paper proposes a scheme which encodes and decodes the given images with high-dimensional regression-based supervised learning. With this proposed method, several original messages are embedded in a file; and high-dimensional regression-based supervised learning conducts for extracting exact one final message from the several original messages where every single original message is not same with the final message. In this case, if attackers read some messages from the image, it is hard to extract our final message.
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