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Face hallucination through differential evolution parameter map learning with facial structure prior

机译:通过差分演进参数地图学习与面部结构的差分演进参数映射

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摘要

Current learning based face hallucination approaches mainly focus on how to design a reasonable objective function, such as using different assumptions and incorporating different regularization terms, but do not give a reasonable way of selecting the model parameters. In this paper, we propose to exploit the facial structure prior to learn a parameter map based on differential evolution. Specifically, we claim that different position patches have different parameter settings because of their different statistical properties, and patches from the same position of different face images should have similar parameter settings. As a result, we first learn a parameter map for each training sample by leveraging an evolutionary algorithm based on differential evolution, and then fuse these learned parameter maps to an optimal parameter map for testing via mean-pooling strategy. Finally, we use the predicted parameter map to guide the co-occurrence relationship modeling in different regions of the input low-resolution (LR) face image. Experimental results demonstrate that, even without seeing the ground truth, results of proposed parameter map learning method are comparable to or better than those traditional unified parameter setting methods and some recently proposed deep learning methods. (C) 2018 Elsevier Inc. All rights reserved.
机译:基于目前的学习面的幻觉方法主要关注如何设计合理的客观函数,例如使用不同的假设并包含不同的正则化术语,但不给出选择模型参数的合理方式。在本文中,我们建议在基于差分演进的参数地图之前利用面部结构。具体地,我们声称不同的位置贴片由于其不同的统计特性而具有不同的参数设置,并且来自不同面部图像的相同位置的补丁应该具有类似的参数设置。因此,我们首先通过利用基于差分演进的进化算法来学习每个训练样本的参数映射,然后将这些学习的参数映射熔断到最佳参数映射,以通过均值池策略进行测试。最后,我们使用预测的参数映射来指导输入低分辨率(LR)面部图像的不同区域中的共发关系建模。实验结果表明,即使没有看到基础事实,所提出的参数地图学习方法的结果也比传统的统一参数设置方法更好,以及最近提出的深度学习方法。 (c)2018年Elsevier Inc.保留所有权利。

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