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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Reconstruction and analysis of multi-pose face images based on nonlinear dimensionality reduction
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Reconstruction and analysis of multi-pose face images based on nonlinear dimensionality reduction

机译:基于非线性降维的多姿态人脸图像重建与分析

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Locally linear embedding (LLE) is a nonlinear dimensionality reduction method proposed recently. It can reveal the intrinsic distribution of data, which cannot be provided by classical linear dimensionality reduction methods. The application of LLE, however, is limited because of its lack of a parametric mapping between the observation and the low-dimensional output. And the large data set to be reduced is necessary. In this paper, we propose methods to establish the process of mapping from low-dimensional embedded space to high-dimensional space for LLE and validate their efficiency with the application of reconstruction of multi-pose face images. Furthermore, we propose that the high-dimensional structure of multi-pose face images is similar for the same kind of pose change mode of different persons. So given the structure information of data distribution which is obtained by leaning large numbers of multi-pose images in a training set, the support vector regression (SVR) method of statistical learning theory is used to learn the high-dimensional structure of someone based on small sets. The detailed learning method and algorithm are given and applied to reconstruct and synthesize face images in small set cases. The experiments prove that our idea and method is correct. (C) 2003 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:局部线性嵌入(LLE)是最近提出的一种非线性降维方法。它可以揭示数据的固有分布,这是经典线性降维方法无法提供的。但是,LLE的应用受到限制,因为它在观测值和低维输出之间缺乏参数映射。并且需要减少的大数据集。在本文中,我们提出了建立从低维嵌入空间到高维空间的LLE映射过程的方法,并通过重构多姿态人脸图像来验证其效率。此外,我们提出多姿势人脸图像的高维结构对于不同人的相同姿势改变模式是相似的。因此,给定通过在训练集中倾斜大量多姿态图像获得的数据分布的结构信息,就可以使用统计学习理论的支持向量回归(SVR)方法来学习基于某人的高维结构小套。给出了详细的学习方法和算法,并将其应用于小场景下人脸图像的重建和合成。实验证明我们的思想和方法是正确的。 (C)2003模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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