基于量化激活函数训练的神经网络水印

Shingo Yamauchi, Masaki Kawamura
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引用次数: 0

摘要

我们提出了一种包含量化激活函数的水印方法,以提供对量化的鲁棒性。Zhu等人表明,在编码器和解码器之间引入噪声层可以增加对攻击的鲁棒性。尽管对隐写图像有各种各样的攻击,但这些图像通常是jpeg压缩的。由于JPEG压缩过程包含量化,因此水印解码器必须能够从压缩图像中估计出水印。因此,我们提出了一个量化层,引入了一个由双曲正切函数组成的量化激活函数。所提出的神经网络是基于Hamamoto和Kawamura提出的神经网络。通过模拟JPEG压缩的量化,量化层有望提高对JPEG压缩的鲁棒性。以误码率(BER)评价鲁棒性,以峰值信噪比(PSNR)评价隐写图像质量。该网络实现了35 dB以上的高图像质量,并且在JPEG压缩中,对于q值为30或更高的情况下,可以提取BER小于0.1的水印。因此,它对JPEG压缩比Hamamoto和Kawamura的模型更健壮。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Based Watermarking Trained with Quantized Activation Function
We propose a watermarking method that incor-porates a quantized activation function to provide robustness against quantization. Zhu et al. showed that the introduction of a noise layer between the encoder and decoder can increase the robustness against attacks. Although there are various attacks on stego-images, these images are often JPEG-compressed. As the process of JPEG compression includes quantization, the watermark decoder must be able to estimate watermarks from compressed images. Hence, we propose a quantization layer that introduces a quantized activation function consisting of the hy-perbolic tangent function. The proposed neural network is based on that proposed by Hamamoto and Kawamura. By simulating the quantization of JPEG compression, the quantization layer is expected to improve the robustness against JPEG compression. The robustness was evaluated by the bit error rate (BER), and the stego-image quality was evaluated by the peak signal-to-noise ratio (PSNR). The proposed network achieved a high image quality of more than 35 dB, and it could extract watermarks with a BER of less than 0.1 for Q-values of 30 or higher in JPEG compression. It was thus more robust against JPEG compression than Hamamoto and Kawamura's model.
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