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Efficient learning based face hallucination approach via facial standard deviation prior

机译:通过面部优先标准偏差进行基于高效学习的面部幻觉方法

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Most state-of-the-art face hallucination approaches suffer from complicated learning patterns and highly intensive computation, which will lead to low efficiency and considerable computing resources. Therefore, how to restore real face image quickly and efficiently is still an important issue in this field. To solve or partially solve the problem, this paper proposed a novel facial standard deviation prior based approach which can provide superior results with high efficiency for real face images. The high frequency information of test image will be enhanced via a facial specific sharpening operator which is obtained through the learning of standard deviation correspondence of training set. Experiments in simulation and real world images verified the effectiveness of proposed approach, and the distinct advantage on runtime and resource requirement of proposed approach.
机译:大多数最新的面部幻觉方法都面临着复杂的学习模式和高度密集的计算,这将导致效率低下和大量的计算资源。因此,如何快速有效地还原真实人脸图像仍然是该领域的重要课题。为了解决或部分解决该问题,本文提出了一种新颖的基于面部标准差先验的方法,该方法可以为真实的人脸图像提供高效的卓越结果。测试图像的高频信息将通过面部特定的锐化算子进行增强,该算子是通过学习训练集的标准偏差对应关系而获得的。在仿真和真实世界图像上的实验证明了该方法的有效性,以及该方法在运行时间和资源需求方面的明显优势。

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