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Rapid block wise multi-resolution clustering of facial images for intelligent watermarking

机译:人脸图像的快速分块多分辨率聚类,用于智能水印

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摘要

Population-based evolutionary computation (EC) is widely used to optimize embedding parameters in intelligent watermarking systems. Candidate solutions generated with these techniques allow finding optimal embedding parameters of all blocks of a cover image. However, using EC techniques for full optimization of a stream of high-resolution grayscale face images is very costly. In this paper, a blockwise multi-resolution clustering (BMRC) framework is proposed to reduce this cost. During training phase, solutions obtained from multi-objective optimization of reference face images are stored in an associative memory. During generalization operations, embedding parameters of an input image are determined by searching for previously stored solutions of similar sub-problems in memory, thereby eliminating the need for full optimization for the whole face image. Solutions for sub-problems correspond to the most common embedding parameters for a cluster of similar blocks in the texture feature space. BMRC identifies candidate block clusters used for embedding watermark bits using the robustness score metric. It measures the texture complexity of image block clusters and can thereby handle watermarks of different lengths. The proposed framework implements a multi-hypothesis approach by storing the optimization solutions according to different clustering resolutions and selecting the optimal resolution at the end of the watermarking process. Experimental results on the PUT face image database show a significant reduction in complexity up to 95.5 % reduction in fitness evaluations compared with reference methods for a stream of 198 face images.
机译:基于人口的进化计算(EC)被广泛用于优化智能水印系统中的嵌入参数。用这些技术生成的候选解决方案可以找到封面图像所有块的最佳嵌入参数。但是,使用EC技术来完全优化高分辨率灰度面部图像流非常昂贵。在本文中,提出了一种分块的多分辨率聚类(BMRC)框架来降低此成本。在训练阶段,将从参考人脸图像的多目标优化中获得的解决方案存储在关联存储器中。在一般化操作期间,通过搜索存储器中类似子问题的先前存储的解决方案来确定输入图像的嵌入参数,从而消除了对整个面部图像进行完全优化的需要。子问题的解决方案对应于纹理特征空间中一组相似块的最常见嵌入参数。 BMRC使用稳健性评分标准来识别用于嵌入水印位的候选块簇。它可以测量图像块簇的纹理复杂度,从而可以处理不同长度的水印。所提出的框架通过根据不同的聚类分辨率存储优化解决方案并在加水印过程结束时选择最佳分辨率,从而实现了一种多假设方法。在PUT人脸图像数据库上的实验结果表明,与198个人脸图像流的参考方法相比,适应性评估的复杂度显着降低了95.5%。

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