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DISCRIMINANT INDEPENDENT COMPONENT ANALYSIS AS A SUBSPACE REPRESENTATION

机译:区分独立成分分析作为子空间表示

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摘要

Subspace modeling plays an important role in face recognition. Independent Component Analysis (ICA), a multivariable statistical analysis technique, can be seen as an extension of traditional Principal Component Analysis (PCA) technique, which addresses high order statistics as well as second order statistics. In this paper, a new scheme of subspace-based representation called Discriminant Independent Component Analysis (DICA) is proposed, which combines the strength' of unsupervised learning of ICA and supervised learning of Linear Discriminant Analysis (LDA), and efficiently enhances the generalization ability of ICA-based representation method. Based on DICA subspace analysis, a set of optimal vectors called "discriminant independent faces" are learned from face samples. The effectiveness of our method is demonstrated by performance comparisons with some popular methods such as ICA, PCA, and PCA+LDA. On the large scale database of IIS, significant improvements are observed when there are fewer training samples per person available.
机译:子空间建模在人脸识别中起着重要作用。独立成分分析(ICA)是一种多变量统计分析技术,可以看作是传统的主成分分析(PCA)技术的扩展,该技术可以处理高阶统计量和二阶统计量。本文提出了一种新的基于子空间表示的方案,即判别独立分量分析(DICA),它结合了ICA的无监督学习和线性判别分析(LDA)的监督学习的优势,有效地提高了泛化能力。基于ICA的表示方法。基于DICA子空间分析,从人脸样本中学习了一组称为“区分独立人脸”的最佳矢量。通过与一些流行的方法(如ICA,PCA和PCA + LDA)进行性能比较,证明了我们方法的有效性。在IIS的大型数据库上,每人可获得的培训样本较少时,可以观察到显着的改进。

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