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Rapid intelligent watermarking system for high-resolution grayscale facial images

机译:用于高分辨率灰度人脸图像的快速智能水印系统

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摘要

Facial captures are widely used in many access control applications to authenticate individuals, and grant access to protected information and locations. For instance, in passport or smart card applications, facial images must be secured during the enrollment process, prior to exchange and storage. Digital watermarking may be used to assure integrity and authenticity of these facial images against unauthorized manipulations, through fragile and robust watermarking, respectively. It can also combine other biometric traits to be embedded as invisible watermarks in these facial captures to improve individual verification.ududEvolutionary Computation (EC) techniques have been proposed to optimize watermark embedding parameters in IntelligentWatermarking (IW) literature. The goal of such optimization problem is to find the trade-off between conflicting objectives of watermark quality and robustness. Securing streams of high-resolution biometric facial captures results in a large number of optimization problems of high dimension search space.ududFor homogeneous image streams, the optimal solutions for one image block can be utilized for other image blocks having the same texture features. Therefore, the computational complexity for handling a stream of high-resolution facial captures is significantly reduced by recalling such solutions from an associative memory instead of re-optimizing the whole facial capture image. In this thesis, an associative memory is proposed to store the previously calculated solutions for different categories of texture using the optimization results of the whole image for few training facial images. A multi-hypothesis approach is adopted to store in the associative memory the solutions for different clustering resolutions (number of blocks clusters based on texture features), and finally select the optimal clustering resolution based on the watermarking metrics for each facial image during generalization. This approach was verified using streams of facial captures from PUT database (Kasinski et al., 2008). It was compared against a baseline system representing traditional IW methods with full optimization for all stream images. Both proposed and baseline systems are compared with respect to quality of solution produced and the computational complexity measured in fitness evaluations. The proposed approach resulted in a decrease of 95.5% in computational burden with little impact in watermarking performance for a stream of 198 facial images. The proposed framework Blockwise Multi-Resolution Clustering (BMRC) has been published in Machine Vision and Applications (Rabil et al., 2013a)ududAlthough the stream of high dimensionality optimization problems are replaced by few training optimizations, and then recalls from an associative memory storing the training artifacts. Optimization problems with high dimensionality search space are challenging, complex, and can reach up to dimensionality of 49k variables represented using 293k bits for high-resolution facial images. In this thesis, this large dimensionality problem is decomposed into smaller problems representing image blocks which resolves convergence problems with handling the larger problem. Local watermarking metrics are used in cooperative coevolution on block level to reach the overall solution. The elitism mechanism is modified such that the blocks of higher local watermarking metrics are fetched across all candidate solutions for each position, and concatenated together to form the elite candidate solutions. This proposed approach resulted in resolving premature convergence for traditional EC methods, and thus 17% improvement on the watermarking fitness is accomplished for facial images of resolution 2048×1536. This improved fitness is achieved using few iterations implying optimization speedup. The proposed algorithm Blockwise Coevolutionary Genetic Algorithm (BCGA) has been published in Expert Systems with Applications (Rabil et al., 2013c).ududThe concepts and frameworks presented in this thesis can be generalized on any stream of optimization problems with large search space, where the candidate solutions consist of smaller granularity problems solutions that affect the overall solution. The challenge for applying this approach is finding the significant feature for this smaller granularity that affects the overall optimization problem. In this thesis the texture features of smaller granularity blocks represented in the candidate solutions are affecting the watermarking fitness optimization of the whole image. Also the local metrics of these smaller granularity problems are indicating the fitness produced for the larger problem.ududAnother proposed application for this thesis is to embed offline signature features as invisible watermark embedded in facial captures in passports to be used for individual verification during border crossing. The offline signature is captured from forms signed at borders and verified against the embedded features. The individual verification relies on one physical biometric trait represented by facial captures and another behavioral trait represented by offline signature.
机译:面部捕获广泛用于许多访问控制应用程序中,以对个人进行身份验证,并授予对受保护信息和位置的访问权限。例如,在护照或智能卡应用中,在交换和存储之前,必须在注册过程中保护面部图像的安全。数字水印可以用于分别通过脆弱和鲁棒的水印来确保这些面部图像的完整性和真实性,以防止未经授权的操作。它还可以结合其他生物特征,以在这些面部捕获中作为不可见的水印嵌入,以改善个人验证。 ud ud在智能水印(IW)文献中提出了进化计算(EC)技术来优化水印嵌入参数。这种优化问题的目的是在水印质量和鲁棒性的冲突目标之间找到平衡点。确保高分辨率生物特征面部捕捉流的安全性会导致大量高维搜索空间的优化问题。 ud ud对于同质图像流,一个图像块的最佳解决方案可用于具有相同纹理特征的其他图像块。因此,通过从关联存储器调用这样的解决方案而不是重新优化整个面部捕捉图像,可以显着降低用于处理高分辨率面部捕捉流的计算复杂性。在本文中,提出了一种联合存储器,该存储器使用针对少数训练面部图像的整个图像的优化结果来存储先前针对不同纹理类别计算的解。采用多假设的方法将不同聚类分辨率(基于纹理特征的块聚类数量)的解决方案存储在关联存储器中,最后在泛化期间基于每个面部图像的水印度量选择最佳聚类分辨率。使用来自PUT数据库的面部捕捉流验证了该方法(Kasinski等,2008)。将其与代表传统IW方法且对所有流图像进行全面优化的基线系统进行了比较。提议的系统和基准系统都将在生成的解决方案的质量和适用性评估中测量的计算复杂性方面进行比较。所提出的方法使198个面部图像流的计算负担减少了95.5%,而对水印性能的影响很小。提议的框架逐块多分辨率聚类(BMRC)已发布在《机器视觉与应用》(Rabil等人,2013a) ud ud中,尽管高维优化问题流被少量训练优化所取代,然后从关联存储器,用于存储训练工件。高维搜索空间的优化问题具有挑战性,复杂性,并且可以达到针对高分辨率人脸图像使用293k位表示的49k变量的维数。在这篇论文中,这个大尺寸的问题被分解成代表图像块的较小的问题,解决了解决较大问题的收敛性问题。局部水印度量用于块级别的协作协同进化,以达到整体解决方案。修改了精英机制,以便在每个位置的所有候选解决方案中获取较高局部水印度量的块,并将其连接在一起以形成精英候选解决方案。该方法解决了传统EC方法的过早收敛问题,因此对于分辨率为2048×1536的人脸图像,水印适合度提高了17%。使用很少的迭代(意味着优化加速)可以达到更高的适应性。提出的算法逐块协同进化遗传算法(BCGA)已发表在《专家系统与应用》(Rabil et al。,2013c)中。 ud ud可以将本文提出的概念和框架推广到大搜索量的任何优化问题流中。空间,其中候选解决方案由影响整体解决方案的较小粒度问题解决方案组成。应用此方法所面临的挑战是找到影响整个优化问题的较小粒度的重要功能。在本文中,候选解决方案中表示的较小粒度块的纹理特征正在影响整个图像的水印适合度优化。同样,这些较小粒度问题的局部度量也表明了对较大问题的适应性。 ud ud本论文的另一个拟议应用是将脱机签名特征作为不可见水印嵌入到护照的面部捕获中,以便在验证期间用于个人验证。过境。脱机签名是从边界签名的表单中捕获的,并针对嵌入式功能进行了验证。个体验证依赖于以面部抓取为代表的一种生理生物特征和以脱机签名为代表的另一行为特征。

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    Guendy Bassem S. Rabil;

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  • 年度 2013
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