CNN based Image Steganography Techniques: A Cutting Edge/State of Art Review

S. Thenmozhi, Bharath M. B
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Abstract

Data security is essential for information distribution in the world of information and communication tools today. Data concealing has grown more and more important with the rise of intense multimedia sharing and secret discussions. Steganography is a method of obscuring data in a way that makes it nearly impossible to find. According to a recent study, when the networks between the layers closest to the input and those closest to the output are thinner, convolutional neural networks can become noticeably deeper, more precise, and easier to train. The fundamental drawback of R-CNN, which was previously utilized in place of CNN, is that it adds the characteristics while CNN is used to concatenate them.
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基于CNN的图像隐写技术:前沿/艺术评论
在当今的信息和通信工具世界中,数据安全对于信息分发至关重要。随着多媒体共享和秘密讨论的兴起,数据隐藏变得越来越重要。隐写术是一种模糊数据的方法,使其几乎不可能被发现。根据最近的一项研究,当最接近输入和最接近输出的层之间的网络更薄时,卷积神经网络可以变得更深入,更精确,更容易训练。R-CNN之前是用来代替CNN的,它的根本缺点是添加特征,而CNN是用来连接特征的。
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