LECA: A learned approach for efficient cover-agnostic watermarking

Xiyang Luo, Michael Goebel, Elnaz Barshan, Feng Yang
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Abstract

In this work, we present an efficient multi-bit deep image watermarking method that is cover-agnostic yet also robust to geometric distortions such as translation and scaling as well as other distortions such as JPEG compression and noise. Our design consists of a light-weight watermark encoder jointly trained with a deep neural network based decoder. Such a design allows us to retain the efficiency of the encoder while fully utilizing the power of a deep neural network. Moreover, the watermark encoder is independent of the image content, allowing users to pre-generate the watermarks for further efficiency. To offer robustness towards geometric transformations, we introduced a learned model for predicting the scale and offset of the watermarked images. Moreover, our watermark encoder is independent of the image content, making the generated watermarks universally applicable to different cover images. Experiments show that our method outperforms comparably efficient watermarking methods by a large margin.
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LECA:一种有效的覆盖不可知水印的学习方法
在这项工作中,我们提出了一种高效的多比特深度图像水印方法,该方法与覆盖无关,但对平移和缩放等几何扭曲以及JPEG压缩和噪声等其他扭曲也具有鲁棒性。我们的设计包括一个轻量级的水印编码器和一个基于深度神经网络的解码器。这样的设计使我们在保留编码器的效率的同时充分利用了深度神经网络的功能。此外,水印编码器独立于图像内容,允许用户预先生成水印以提高效率。为了提供对几何变换的鲁棒性,我们引入了一个学习模型来预测水印图像的尺度和偏移量。此外,我们的水印编码器独立于图像内容,使生成的水印普遍适用于不同的封面图像。实验表明,该方法的性能明显优于其他有效的水印方法。
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