我们能在多大程度上改进基于微特征的人脸识别系统?

Huu-Tuan Nguyen, Ngoc-Son Vu, A. Caplier
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引用次数: 6

摘要

本文对人脸识别方法进行了改进,将LBP描述子作为人脸图像微特征编码的主要技术。我们的改进主要集中在特征提取和降维步骤上。在特征提取中,我们使用了局部二值模式(LBP)的一种变体,即椭圆局部二值模式(ELBP),它比LBP更有效地提取人脸的微特征。一个像素的ELBP是通过在水平椭圆上与其P个相邻像素的灰度值进行阈值化来构建的。将ELBP算子应用于有向边缘大小模式(POEM)中,构建椭圆诗(EPOEM)描述符。采用基于奇异值分解(SVD)的白化主成分分析(WPCA)进行降维。为了对我们的改进进行性能评估,我们将它们与基于LBP、基于POEM的方法和其他流行的人脸识别系统进行了比较。在最先进的FERET和AR人脸数据库上的实验结果证明了我们改进的优势和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How far we can improve micro features based face recognition systems?
This paper presents improvements for face recognition methods that use LBP descriptor as a main technique in encoding micro features of face images. Our improvements are focused on the feature extraction and dimension reduction steps. In feature extraction, we use a variant of Local Binary Pattern (LBP) so-called Elliptical Local Binary Pattern (ELBP), which is more efficient than LBP for extracting micro facial features of the human face. ELBP of one pixel is built by thresholding its gray value with its P neighboring pixels on a horizontal ellipse. ELBP operator is applied in Pattern of Oriented Edge Magnitudes (POEM) to build Elliptical POEM (EPOEM) descriptor. The dimension reduction step is conducted by using Singular Value Decomposition (SVD) based Whitened Principal Component Analysis (WPCA). For performance evaluation of our improvements, we compare them with LBP based, POEM based approaches and other popular face recognition systems. The experimental results on state-of-the-art FERET and AR face databases prove the advantages and effectiveness of our improvements.
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