View-subspace analysis of multi-view face patterns

S. Li, Xiao-guang Lv, Hong Zhang
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引用次数: 13

Abstract

Multi-view face detection and recognition has been a challenging problem. The challenge is due to the fact that the distribution of multi-view faces in a feature space is more dispersed and more complicated than that of frontal faces. This paper presents an investigation into several view-subspace representations of multi-view faces: learning by using independent component analysis (ICA), independent subspace analysis (ISA) and topographic independent component analysis (TICA). It is shown that view-specific basis components can be learned from multi-view face examples in an unsupervised way by using ICA, ISA and TICA; whereas the components learned by using principal component analysis reveal little view-related information. The learned results provide sensible basis for constructing view-subspaces for multi-view faces. Comparative experiments demonstrate distinctive properties of ICA, ISA and TICA results, and the suitability of the results as representations of multi-view faces.
多视图人脸图案的视子空间分析
多视角人脸检测与识别一直是一个具有挑战性的问题。多视图人脸在特征空间中的分布比正面人脸分布更分散、更复杂,这是一种挑战。本文研究了多视图人脸的几种视图-子空间表示:独立分量分析(ICA)、独立子空间分析(ISA)和地形独立分量分析(TICA)。结果表明,利用ICA、ISA和TICA,可以以无监督的方式从多视图人脸样本中学习到特定于视图的基分量;而通过主成分分析获得的成分揭示的视图相关信息很少。学习结果为构建多视图人脸的视图子空间提供了有意义的依据。对比实验证明了ICA、ISA和TICA结果的不同性质,以及结果作为多视图人脸表征的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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