论文标题
使用深神经网络的强大文档图像水印方案
A Robust Document Image Watermarking Scheme using Deep Neural Network
论文作者
论文摘要
水印是一种重要的版权保护技术,通常将身份信息嵌入载体中。然后可以提取身份以证明即使遭受各种攻击后,也可以从水标载体中证明版权。大多数现有的水印技术以自然图像为载体。与自然图像不同,文档图像的颜色和纹理不那么丰富,因此具有较少的信息以携带水印。本文提出了使用深神经网络的端到端文档图像水印方案。具体而言,编码器和解码器旨在嵌入和提取水印。添加了噪声层来模拟现实中可能遇到的各种攻击,例如作物,辍学,高斯模糊,高斯噪声,调整大小和JPEG压缩。文本敏感的损失函数旨在限制字符上的嵌入修改。提出了一种嵌入强度调节策略,以提高水印图像的质量,而萃取精度几乎没有。实验结果表明,拟议的文档图像水印技术在稳健性和图像质量方面优于三个最先进的方法。
Watermarking is an important copyright protection technology which generally embeds the identity information into the carrier imperceptibly. Then the identity can be extracted to prove the copyright from the watermarked carrier even after suffering various attacks. Most of the existing watermarking technologies take the nature images as carriers. Different from the natural images, document images are not so rich in color and texture, and thus have less redundant information to carry watermarks. This paper proposes an end-to-end document image watermarking scheme using the deep neural network. Specifically, an encoder and a decoder are designed to embed and extract the watermark. A noise layer is added to simulate the various attacks that could be encountered in reality, such as the Cropout, Dropout, Gaussian blur, Gaussian noise, Resize, and JPEG Compression. A text-sensitive loss function is designed to limit the embedding modification on characters. An embedding strength adjustment strategy is proposed to improve the quality of watermarked image with little loss of extraction accuracy. Experimental results show that the proposed document image watermarking technology outperforms three state-of-the-arts in terms of the robustness and image quality.