二维加权PCA人脸识别算法

V. Nhat, Sungyoung Lee
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引用次数: 26

摘要

主成分分析(PCA)技术是图像识别中一个重要而发达的领域,迄今为止已经提出了许多线性识别方法。在主成分分析中,通常需要将图像转换为ID向量,但近年来提出了二维主成分分析(2DPCA)技术。在2DPCA中,直接将PCA技术应用于原始图像,而不将其转化为ID向量。在本文中,我们提出了一种新的基于2DPCA的方法,可以提高2DPCA方法的性能。在对训练数据进行标记的人脸识别中,通常需要一个投影来强调聚类之间的区分。无论任务多么简单,PCA和2DPCA都可能无法完成这一点,因为它们是无监督的技术。最大化数据分散的方向可能不足以区分集群。因此,我们提出了一种新的基于2dpca的方案,该方案可以直接考虑数据标注,提高了识别系统的性能。实验结果表明,该方法与2DPCA方法相比具有更好的性能,且复杂度与2DPCA方法相近。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-dimensional weighted PCA algorithm for face recognition
Principle component analysis (PCA) technique is an important and well-developed area of image recognition and to date many linear discrimination methods have been put forward. Basically, in PCA the image always needs to be transformed into ID vector, however recently two-dimensional PCA (2DPCA) technique have been proposed. In 2DPCA, PCA technique is applied directly on the original images without transforming into ID vector. In this paper, we propose a new 2DPCA-based method that can improve the performance of the 2DPCA approach. In face recognition where the training data are labeled, a projection is often required to emphasize the discrimination between the clusters. Both PCA and 2DPCA may fail to accomplish this, no matter how easy the task is, as they are unsupervised techniques. The directions that maximize the scatter of the data might not be as adequate to discriminate between clusters. So we proposed a new 2DPCA-based scheme which can straightforwardly take into consideration data labeling, and makes the performance of recognition system better. Experiment results show our method achieves better performance in comparison with the 2DPCA approach with the complexity nearly as same as that of 2DPCA method.
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