A study on distance measures of tensor manifold for face recognition

Y. K. Lee, A. Teoh
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引用次数: 3

Abstract

Gabor-based region covariance matrices (GRCM) or known as tensor are a powerful face image descriptor and have shown promising result in face recognition. The GRCM lie on tensor manifold is inherently non-Euclidean. As such the distance measure on tensor manifold should take the geometry characteristic of the curvature into account. Presently, Affine Invariant Riemannian Metric is the most popular geodesic distance used in literature despite its heavy computation load. This paper studies several alternative distance measures and investigate their tradeoff between performance and computation time.
人脸识别中张量流形距离度量的研究
基于gabor的区域协方差矩阵(GRCM)是一种强大的人脸图像描述符,在人脸识别中显示出良好的效果。张量流形上的GRCM本质上是非欧几里德的。因此,张量流形上的距离测量应考虑曲率的几何特性。仿射不变黎曼度量是目前文献中最常用的测地线距离,但其计算量较大。本文研究了几种可选的距离度量,并研究了它们在性能和计算时间之间的权衡。
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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