论文标题
基于卷积神经网络的图像图像使用离散小波变换
Convolutional Neural Network-Based Image Watermarking using Discrete Wavelet Transform
论文作者
论文摘要
随着互联网的日益普及,数字图像被使用并更频繁地传输。尽管这种现象有助于轻松访问信息,但它也通过允许非法使用,复制和数字内容盗窃来造成安全问题并侵犯知识产权。在数字图像中使用水印是维持安全性的最常见方法之一。水印是通过在原始图像中添加数字水印来证明并宣布图像的所有权。水印可以是文本或图像中的图像或图像中放置在图像中,预计将具有挑战性地删除。本文提出了卷积神经网络(CNN)和小波转换的结合,以获取用于嵌入和提取水印的水印网络。该网络独立于主机图像分辨率,可以接受各种水印,并且在保持性能的同时只有11层。性能通过两个术语来衡量;提取的水印与原始水印之间的相似性以及宿主图像与水印的相似性。
With the growing popularity of the Internet, digital images are used and transferred more frequently. Although this phenomenon facilitates easy access to information, it also creates security concerns and violates intellectual property rights by allowing illegal use, copying, and digital content theft. Using watermarks in digital images is one of the most common ways to maintain security. Watermarking is proving and declaring ownership of an image by adding a digital watermark to the original image. Watermarks can be either text or an image placed overtly or covertly in an image and are expected to be challenging to remove. This paper proposes a combination of convolutional neural networks (CNNs) and wavelet transforms to obtain a watermarking network for embedding and extracting watermarks. The network is independent of the host image resolution, can accept all kinds of watermarks, and has only 11 layers while keeping performance. Performance is measured by two terms; the similarity between the extracted watermark and the original one and the similarity between the host image and the watermarked one.