Block Independent Component Analysis for Face Recognition

Lei Zhang, Quanxue Gao, David Zhang
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引用次数: 15

Abstract

This paper presents a subspace algorithm called block independent component analysis (B-ICA) for face recognition. Unlike the traditional ICA, in which the whole face image is stretched into a vector before calculating the independent components (ICs), B-ICA partitions the facial images into blocks and takes the block as the training vector. Since the dimensionality of the training vector in B-ICA is much smaller than that in traditional ICA, it can reduce the face recognition error caused by the dilemma in ICA, i.e. the number of available training samples is greatly less than that of the dimension of training vector. Experiments on the well-known Yale and AR databases validate that the B-ICA can achieve higher recognition accuracy than ICA and enhanced ICA (EICA).
人脸识别中的块独立分量分析
提出了一种用于人脸识别的子空间算法——分块独立分量分析(B-ICA)。与传统ICA在计算独立分量(independent components, ic)之前将整个人脸图像拉伸成一个向量不同,B-ICA将人脸图像分割成块,并将块作为训练向量。由于B-ICA的训练向量的维数比传统ICA小得多,因此可以减少由于ICA的困境(即可用的训练样本数量大大少于训练向量的维数)而导致的人脸识别误差。在知名的耶鲁数据库和AR数据库上的实验验证了B-ICA比ICA和增强型ICA (EICA)具有更高的识别精度。
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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