基于步态和人脸识别的规范空间表示

P. Huang, Christopher J. Harris, M. Nixon
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引用次数: 26

摘要

基于主成分分析的特征空间变换(EST)在人脸自动识别和步态分析中是一种有效的度量方法,但没有使用数据分析来提高分类能力。提出了一种将基于正则分析的正则空间变换与特征空间变换相结合的方法。该方法可以降低数据维数,同时优化不同步态序列或人脸类别的可分性。每个图像模板从高维图像空间投影到低维正则空间中的单个点。在这个新的空间中,人类步态和人脸的识别变得更加简单和准确。人体步态分析和人脸识别的实验结果表明,该方法优于应用EST或单独应用CST。因此,EST和CST的结合在新兴的生物识别技术中具有相当大的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Canonical space representation for recognizing humans by gait and face
Eigenspace transformation (EST) based on principal component analysis has been demonstrated to be a potent metric in automatic face recognition and gait analysis, but without using data analysis to increase classification capability. We propose a new approach which combines canonical space transformation (CST) based on canonical analysis, with eigenspace transformation. This method can be used to reduce data dimensionality and to optimize the class separability of different gait sequences or face classes simultaneously. Each image template is projected from a high-dimensional image space to a single point in a low-dimensional canonical space. In this new space the recognition of human gait and faces becomes much simpler and accurate. Experimental results for human gait analysis and face recognition show this new method is superior to applying EST or applying CST alone. As such, the combination of EST and CST is shown to be of considerable advantage in an emerging new biometric.
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