首页> 外文会议>IEEE International Conference on Image Processing;ICIP 2012 >Graph discriminant analysis on multi-manifold (GDAMM): A novel super-resolution method for face recognition
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Graph discriminant analysis on multi-manifold (GDAMM): A novel super-resolution method for face recognition

机译:多流形图判别分析(GDAMM):一种新的人脸识别超分辨率方法

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How to efficiently recognize low-resolution (LR) probe images of one face recognition system, in which high-resolution (HR) gallery of faces is enrolled, is still an open problem. In this paper, we develop a novel super-resolution method, namely Graph Discriminant Analysis on Multi-Manifold (GDAMM), to super-resolved the HR version of a LR probe image and then perform matching at the resolution of the HR gallery. Unlike classical super-resolution approaches considering only the data fidelity, GDAMM takes the advantages of both manifold learning and discriminant analysis to integrate the data constraint and discriminant constraint, seeking the mapping between LR images and HR ones. In the reconstructed HR image space, faces of one person in the same manifold are close and those in different manifolds are far apart. Experiments on Extended Yale-B database and AR face database demonstrate that the learned discriminant information is essential for improving recognition accuracy. Through the contrastive experiment, the results (recognition rates) indicate that the proposed GDAMM method can greatly surpass classical super-resolution approaches, even outperforming the ideal case of having probe images of HR gallery by a big margin (nearly 9% on Extended Yale-B database and 8% on AR face database).
机译:如何有效地识别其中注册了高分辨率(HR)人像库的一个面部识别系统的低分辨率(LR)探测图像,仍然是一个悬而未决的问题。在本文中,我们开发了一种新颖的超分辨率方法,即多歧管图判别分析(GDAMM),以超分辨LR探针图像的HR版本,然后以HR画廊的分辨率进行匹配。与仅考虑数据保真度的经典超分辨率方法不同,GDAMM利用流形学习和判别分析的优势来整合数据约束和判别约束,从而寻求LR图像和HR图像之间的映射。在重建的HR图像空间中,同一流形中一个人的脸很近,而不同流形中一个人的脸很远。在扩展Yale-B数据库和AR人脸数据库上进行的实验表明,学习到的判别信息对于提高识别准确性至关重要。通过对比实验,结果(识别率)表明,所提出的GDAMM方法可以大大超越经典的超分辨率方法,甚至可以大大超越拥有HR画廊探测图像的理想情况(扩展耶鲁大学将近9% B数据库,AR人脸数据库占8%)。

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