Kwak Keun-Chang, Pedrycz Witold
Intelligent Robot Division, Electronics and Telecommunications Research Institute (ETRI), Daejeon 305-350, Korea.
IEEE Trans Neural Netw. 2007 Mar;18(2):530-41. doi: 10.1109/TNN.2006.885436.
This paper is concerned with an enhanced independent component analysis (ICA) and its application to face recognition. Typically, face representations obtained by ICA involve unsupervised learning and high-order statistics. In this paper, we develop an enhancement of the generic ICA by augmenting this method by the Fisher linear discriminant analysis (LDA); hence, its abbreviation, FICA. The FICA is systematically developed and presented along with its underlying architecture. A comparative analysis explores four distance metrics, as well as classification with support vector machines (SVMs). We demonstrate that the FICA approach leads to the formation of well-separated classes in low-dimension subspace and is endowed with a great deal of insensitivity to large variation in illumination and facial expression. The comprehensive experiments are completed for the facial-recognition technology (FERET) face database; a comparative analysis demonstrates that FICA comes with improved classification rates when compared with some other conventional approaches such as eigenface, fisherface, and the ICA itself.
本文关注一种增强型独立成分分析(ICA)及其在人脸识别中的应用。通常,通过ICA获得的面部表征涉及无监督学习和高阶统计量。在本文中,我们通过将Fisher线性判别分析(LDA)与通用ICA方法相结合来对其进行增强,因此简称为FICA。我们系统地开发并展示了FICA及其底层架构。通过比较分析探究了四种距离度量以及使用支持向量机(SVM)进行分类的情况。我们证明,FICA方法能够在低维子空间中形成分离良好的类别,并且对光照和面部表情的大幅变化具有很强的不敏感性。针对人脸识别技术(FERET)人脸数据库完成了全面实验;比较分析表明,与特征脸、Fisher脸和ICA本身等其他一些传统方法相比,FICA具有更高的分类准确率。