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Research of multi-scales Gabor uncertainty in face recognition

机译:人脸识别中多尺度Gabor不确定性研究

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In face recognition multi-scales Gabor features contain a large amount of redundant information and the value of the features are different from each other. The paper proposes multi-scales Gabor uncertainty weighted fusion algorithm in face recognition, multi-scales Gabor features were used to show facial features firstly, and then weights and uncertainties were calculated to get the last facial feature by multi-scales uncertainty weighted fusion algorithm. At the same time 2DPCA method was exploited to construct the linear subspace and Euclidean distance based classifier was adopted for classification. With the ORL database, the experimental results indicated that compared with the use of 2DPCA, traditional wavelet and Gabor wavelet feature extraction method, the proposed method in this paper had obtained better recognition rate.
机译:在人脸识别中,多尺度Gabor特征包含大量冗余信息,并且特征的值彼此不同。提出了多尺度Gabor不确定度加权融合算法用于人脸识别,首先利用多尺度Gabor特征表示人脸特征,然后通过多尺度不确定度加权融合算法计算权重和不确定度,以获取最后的人脸特征。同时利用2DPCA方法构造线性子空间,并采用基于欧氏距离的分类器进行分类。通过ORL数据库,实验结果表明,与2DPCA,传统小波和Gabor小波特征提取方法相比,本文提出的方法具有较高的识别率。

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