Face recognition based on selection approach via Canonical Correlation Analysis feature fusion

Huy Nguyen-Quoc, Vinh Truong Hoang
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引用次数: 3

Abstract

Face matching is an active research topic in the last decade due to various applications in pattern recognition. Rather than using a single feature type, the fusion of many distinct features might decrease the error rate of facial recognition systems. This also increases the time processing and data storage. In this paper, we first employ feature fusion extracted from HOG and GIST descriptor from facial image and use Canonical Correlation Analysis (CCA) to combine into a single feature. Then, a feature selection approach based on Fisher ranking is considered to remove irrelevant and noisy features. The experiment is evaluated on three common datasets (AR, Georgia Tech and MUCT) which have been shown the improvement of the proposed approach.
基于典型相关分析特征融合的选择方法的人脸识别
由于人脸匹配在模式识别中的各种应用,是近十年来一个活跃的研究课题。而不是使用单一的特征类型,许多不同的特征融合可能会降低错误率的面部识别系统。这也增加了处理时间和数据存储。本文首先从人脸图像中提取HOG和GIST描述符进行特征融合,并利用典型相关分析(Canonical Correlation Analysis, CCA)将其合并为单个特征。然后,考虑了一种基于Fisher排序的特征选择方法来去除不相关和有噪声的特征。实验在三个常用数据集(AR, Georgia Tech和MUCT)上进行了评估,这些数据集显示了所提出方法的改进。
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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