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Multiobjective Image Data Hiding Based on Neural Networks and Memetic Optimization

机译:基于神经网络和模因优化的多目标图像数据隐藏

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This paper presents a hybridization of neural networks and multiobjective memetic optimization for an adaptive, robust, and perceptual data hiding method for colour images. The multiobjective optimization problem of a robust and perceptual image data hiding is introduced. In particular, trade-off factors in designing an optimal image data hiding to maximize the quality of watermarked images and the robusteness of watermark are investigated. With the fixed size of a logo watermark, there is a conflict between these two objectives, thus a multiobjective optimization problem is introduced. We propose to use a hybrid between general regression neural networks (GRNN) and multiobjective memetic algorithms (MOMA) to solve this challenging problem. Specifically, a GRNN is used for the efficient watermark embedding and extraction in the wavelet domain. Optimal watermark embedding factors and the smooth parameter of GRNN are searched by a MOMA. The experimental results show that the propsed approach achieves adaptation, robustness, and imperceptibility in image data hiding.
机译:本文提出了一种用于彩色图像自适应,鲁棒和可感知数据隐藏方法的神经网络和多目标模因优化的混合方法。介绍了一种健壮且可感知的图像数据隐藏的多目标优化问题。特别地,研究了在设计最佳图像数据隐藏以最大化水印图像的质量和水印鲁棒性时的权衡因素。在徽标水印大小固定的情况下,这两个目标之间存在冲突,因此引入了多目标优化问题。我们建议在一般回归神经网络(GRNN)和多目标模因算法(MOMA)之间使用混合方法来解决这一难题。具体而言,将GRNN用于小波域中的有效水印嵌入和提取。通过MOMA搜索最佳水印嵌入因子和GRNN的平滑参数。实验结果表明,该方法在图像数据隐藏方面具有自适应性,鲁棒性和不可感知性。

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