基于图最优保局域投影的人脸幻觉

Rongfang Yang, Yunqiong Wang, De-Shun Yang, Tianwei Xu, Juxiang Zhou
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引用次数: 1

摘要

在现有的基于局域保持投影(Locality Preserving Projections, LPP)的人脸幻觉方法中,邻域图的权值是人为预定义的,不利于后续的学习过程。这可能会给算法的性能带来一定的不确定性。本文提出了一种新的降维算法——图优化局部保持投影算法(GoLPP),该算法以最优的方式构造邻域图。然后,利用广义回归神经网络(GRNN)对全局高分辨率人脸图像进行预测;然而,GRNN得到的人脸图像比较光滑,缺乏高频信息。为了提高图像的视觉质量,采用了基于patch的残差模型。实验结果表明,该方法可以有效地重建高分辨率人脸图像,性能优于其他基于LPP的方法。
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Face Hallucination via Using the Graph-Optimal Locality Preserving Projections
In the existing face hallucination approach using Locality Preserving Projections (LPP), the weight in neighborhood graph is artificially predefined, and this scheme does not benefit for subsequent learning process. That may bring about some uncertainty situation in the performance of algorithm. In this paper we use a novel dimension reduction algorithm called Graph-optimized Locality Preserving Projections(GoLPP), which takes construction of neighborhood graph in a optimal way. Then, Generalized Regression Neural Network (GRNN) is used to predict the global high resolution face image. However, the face image obtained by GRNN is smooth and lack of high frequency information. To enhance the image visual quality, a patch based Residual model is adopted. Experiment results show that the proposed approach can reconstruct high resolution face image efficiently, and the performance is better than other methods based LPP.
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