年龄组分类的二维异方差线性判别分析

K. Ueki, T. Hayashida, Tetsunori Kobayashi
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引用次数: 12

摘要

本文提出了一种新的LDA算法2DHLDA (2-Dimensional heteroscadastic Linear Discriminant Analysis)。将该算法应用于不同光照条件下人脸图像的年龄分类。2DHLDA显著克服了奇异性问题,即所谓的“小样本大小”问题(S3问题),并将原始特征空间分割为有用维度和讨厌维度,以减少不同光照条件的影响。我们的实验采用两阶段降维步骤,即2DHLDA+LDA。实验结果表明,与传统的1D和2d分类方法相比,基于2dhlda的分类方法提高了分类精度。
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Two-dimensional Heteroscedastic Linear Discriminant Analysis for Age-group Classification
This paper presents a novel LDA algorithm named 2DHLDA (2-Dimensional Heteroscedastic Linear Discriminant Analysis). The proposed algorithms are applied on age-group classification using facial images under various lighting conditions. 2DHLDA significantly overcomes the singularity problem, so-called 'Small Sample Size' problem (S3 problem), and the original feature space is split into useful dimensions and nuisance dimensions to reduce the influence of different lighting conditions. A two-phased dimensional reduction step, namely 2DHLDA+LDA, is used in our experiment. Our experimental results show that the new 2DHLDA-based approach improves classification accuracy more than the conventional 1D and 2D-based approaches.
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