A Screen-Shooting Resilient Document Image Watermarking Scheme using Deep Neural Network

Sulong Ge, Zhihua Xia, Yao Tong, Jian Weng, Jia-Nan Liu
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引用次数: 6

Abstract

With the advent of the screen-reading era, the confidential documents displayed on the screen can be easily captured by a camera without leaving any traces. Thus, this paper proposes a novel screen-shooting resilient watermarking scheme for document image using deep neural network. By applying this scheme, when the watermarked image is displayed on the screen and captured by a camera, the watermark can be still extracted from the captured photographs. Specifically, our scheme is an end-to-end neural network with an encoder to embed watermark and a decoder to extract watermark. During the training process, a distortion layer between encoder and decoder is added to simulate the distortions introduced by screen-shooting process in real scenes, such as camera distortion, shooting distortion, light source distortion. Besides, an embedding strength adjustment strategy is designed to improve the visual quality of the watermarked image with little loss of extraction accuracy. The experimental results show that the scheme has higher robustness and visual quality than other three recent state-of-the-arts. Specially, even if the shooting distances and angles are in extreme, our scheme can also obtain high extraction accuracy.
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一种基于深度神经网络的截屏弹性文档图像水印方案
随着屏幕阅读时代的到来,屏幕上显示的机密文件可以很容易地被摄像头捕捉到,不留任何痕迹。为此,本文提出了一种基于深度神经网络的文档图像截屏弹性水印方案。利用该方案,当水印图像显示在屏幕上并被相机捕获时,仍然可以从捕获的照片中提取水印。具体来说,我们的方案是一个端到端的神经网络,用编码器嵌入水印,用解码器提取水印。在训练过程中,在编码器和解码器之间增加一个失真层,模拟真实场景中截屏过程中产生的畸变,如摄像机畸变、拍摄畸变、光源畸变等。此外,设计了一种嵌入强度调整策略,在不影响提取精度的前提下,提高了水印图像的视觉质量。实验结果表明,该方案具有较好的鲁棒性和视觉质量。特别的是,即使在极端的拍摄距离和角度下,我们的方案也能获得很高的提取精度。
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