首页> 外文会议>Australian Joint Conference on Artificial Intelligence; 20041204-06; Cairns(AU) >Extended Locally Linear Embedding with Gabor Wavelets for Face Recognition
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Extended Locally Linear Embedding with Gabor Wavelets for Face Recognition

机译:Gabor小波的扩展局部线性嵌入用于人脸识别

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摘要

Many current face recognition algorithms are based on face representations found by unsupervised statistical methods. One of the fundamental problems of face recognition is dimensionality reduction. Principal component analysis is a well-known linear method for reducing dimension. Recently, locally linear embedding (LLE) is proposed as an unsupervised procedure for mapping higher-dimensional data nonlinearly to a lower-dimensional space. This method, when combined with fisher linear discriminant models, is called extended LLE (ELLE) in this paper. Furthermore, the ELLE yields good classification results in the experiments. Also, we apply the Gabor wavelets as a pre-processing method which contributes a lot to the final results because it deals with the detailed signal of an image and is robust to light variation. Numerous experiments on ORL and AR face data sets have shown that our algorithm is more effective than the original LLE and is insensitive to light variation.
机译:当前许多人脸识别算法都是基于无监督统计方法发现的人脸表示。人脸识别的基本问题之一是降维。主成分分析是一种众所周知的减小尺寸的线性方法。最近,提出了局部线性嵌入(LLE)作为将高维数据非线性地映射到低维空间的无监督过程。该方法与费舍尔线性判别模型结合使用时,在本文中称为扩展LLE(ELLE)。此外,ELLE在实验中产生了良好的分类结果。此外,我们将Gabor小波作为一种预处理方法,对最终结果有很大贡献,因为它处理图像的详细信号并且对光变化具有鲁棒性。在ORL和AR面部数据集上进行的大量实验表明,我们的算法比原始的LLE更有效,并且对光线变化不敏感。

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