基于轻量级CNN的鲁棒图像安全水印方案

D. R.
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引用次数: 16

摘要

近年来,数字水印技术提高了水印图像的精度和抗各种噪声和随机剂量特性的能力。因为,根据最近的攻击,所有现有的水印研究技术都有一个可接受的抵抗水平。在数字图像处理中,深度学习方法是保证水印系统最大抗噪能力的重要方法之一。在数字水印技术中,如何保证较短的计算时间和较高的鲁棒性已成为一个难题。在本研究中,将轻量级卷积神经网络(LW-CNN)技术引入并实现到数字水印方案中,该方案具有比其他标准方法更强的弹性。由于LW-CNN框架的特征选择,减少了计算时间。此外,我们还证明了两种不同攻击的鲁棒性,共谋和几何类型。这项研究工作减少了计算时间,使系统更能抵抗当前的攻击。
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Light Weight CNN based Robust Image Watermarking Scheme for Security
In recent years, digital watermarking has improved the accuracy and resistance of watermarked images against many assaults, such as various noises and random dosage characteristics. Because, based on the most recent assault, all existing watermarking research techniques have an acceptable level of resistance. The deep learning approach is one of the most remarkable methods for guaranteeing maximal resistance in the watermarking system's digital image processing. In the digital watermarking technique, a smaller amount of calculation time with high robustness has recently become a difficult challenge. In this research study, the light weight convolution neural network (LW-CNN) technique is introduced and implemented for the digital watermarking scheme, which has more resilience than any other standard approaches. Because of the LW-CNN framework's feature selection, the calculation time has been reduced. Furthermore, we have demonstrated the robustness of two distinct assaults, collusion and geometric type. This research work has reduced the calculation time and made the system more resistant to current assaults.
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