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Active Shape Model of Combining Pca and Ica: Application to Facial Feature Extraction
引用本文:邓琳,饶妮妮,王刚.Active Shape Model of Combining Pca and Ica: Application to Facial Feature Extraction[J].中国电子科技,2006,4(2):114-117.
作者姓名:邓琳  饶妮妮  王刚
作者单位:School of Life Science and Technology, University of Electronic Science,and Technology of China Chengdu 610054 China
摘    要:Active Shape Model (ASM) is a powerful statistical tool to extract the facial features of a face image under frontal view. It mainly relies on Principle Component Analysis (PCA) to statistically model the variability in the training set of example shapes. Independent Component Analysis (ICA) has been proven to be more efficient to extract face features than PCA. In this paper, we combine the PCA and ICA by the consecutive strategy to form a novel ASM. Firstly, an initial model, which shows the global shape variability in the training set, is generated by the PCA-based ASM. And then, the final shape model, which contains more local characters, is established by the ICA-based ASM. Experimental results verify that the accuracy of facial feature extraction is statistically significantly improved by applying the ICA modes after the PCA modes.

关 键 词:面部特征提取  形状模型  表面特征  变异性
收稿时间:2006-12-16

Active Shape Model of Combining Pca and Ica: Application to Facial Feature Extraction
DENG Lin,RAO Ni-ni,WANG Gang.Active Shape Model of Combining Pca and Ica: Application to Facial Feature Extraction[J].Journal of Electronic Science Technology of China,2006,4(2):114-117.
Authors:DENG Lin  RAO Ni-ni  WANG Gang
Abstract:Active Shape Model (ASM) is a powerful statistical tool to extract the facial features of a face image under frontal view. It mainly relies on Principle Component Analysis (PCA) to statistically model the variability in the training set of example shapes. Independent Component Analysis (ICA) has been proven to be more efficient to extract face features than PCA . In this paper, we combine the PCA and ICA by the consecutive strategy to form a novel ASM. Firstly, an initial model, which shows the global shape variability in the training set, is generated by the PCA-based ASM. And then, the final shape model, which contains more local characters, is established by the ICA-based ASM. Experimental results verify that the accuracy of facial feature extraction is statistically significantly improved by applying the ICA modes after the PCA modes.
Keywords:facial feature extraction  Active Shape Model (ASM)  Principle Component Analysis (PCA)  Independent Component Analysis (ICA)
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