基于小波变换和支持向量机的人脸识别

Bing Luo, Yun Zhang, Yunhong Pan
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引用次数: 26

摘要

提出了一种基于小波变换、支持向量机和聚类方法的人脸识别新方案。我们研究的特点是:1)使用小波分解的低频子带系数LL作为支持向量机的输入,以减弱自然差异的影响;2)对预接受图像采用PCA、LFA等多种方法进行精细识别,以降低FAR并进行机器学习;3)对人脸图像进行同态滤波预处理,以处理光照影响;5)对多目标图库进行人脸识别前聚类,减少搜索时间。在ORL人脸数据集和自建人脸库上进行了实验,取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face recognition based on wavelet transform and SVM
This paper proposed a new scheme for human face recognition using wavelet transform combined with support vector machine as well as clustering method. The features in our research are: 1) using low frequency subband coefficients LL of wavelet decomposition as input for SVM, to attenuate the influence of natural differences, 2) do fine recognition by multi-method of PCA, LFA on pre-accepted image to decrease FAR and for machine learning, 3) conduct homomorphic filter to face image for pre-processing to deal with illuminations influence, 4) machine learning while recognition, update or adjust mode vectors by results of fine recognition, 5) clustering before doing face recognition on multi-target gallery to reduce search time. Experiments on ORL face dataset and self-build face library show efficient results.
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