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首页> 外文期刊>International Journal of Image Processing >Statistical Models for Face Recognition System With Different Distance Measures
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Statistical Models for Face Recognition System With Different Distance Measures

机译:不同距离度量的人脸识别系统的统计模型

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Face recognition is one of the challenging applications of image processing. Robust face recognition algorithm should posses the ability to recognize identity despite many variations in pose, lighting and appearance. Principle Component Analysis (PCA) method has a wide application in the field of image processing for dimension reduction of the data. But these algorithms have certain limitations like poor discriminatory power and ability to handle large computational load. This paper proposes a face recognition techniques based on PCA with Gabor wavelets in the preprocessing stage and statistical modeling methods like LDA and ICA for feature extraction. The classification for the proposed system is done using various distance measure methods like Euclidean Distance(ED), Cosine Distance (CD), Mahalanobis Distance (MHD) methods and the recognition rate were compared for different distance measures. The proposed method has been successfully tested on ORL face data base with 400 frontal images corresponding to 40 different subjects which are acquired under variable illumination and facial expressions. It is observed from the results that use of PCA with Gabor filters and features extracted through ICA method gives a recognition rate of about 98% when classified using Mahalanobis distance classifier. This recognition rate stands better than the conventional PCA and PCA + LDA methods employing other and classifier techniques.
机译:人脸识别是图像处理中具有挑战性的应用之一。鲁棒的人脸识别算法应具备识别身份的能力,尽管姿势,光线和外观有很多变化。主成分分析(PCA)方法在图像处理中用于数据降维方面具有广泛的应用。但是这些算法具有某些局限性,例如较差的区分能力和处理大计算量的能力。本文提出了一种基于PCA和Gabor小波的人脸识别技术,该技术用于预处理,并采用LDA和ICA等统计建模方法进行特征提取。所提议系统的分类使用多种距离测量方法完成,例如欧几里得距离(ED),余弦距离(CD),马氏距离(MHD)方法,并比较了不同距离测量的识别率。所提出的方法已经在ORL人脸数据库上成功进行了测试,该数据库具有400张正面图像,这些正面图像对应于在可变照明和面部表情下获取的40个不同对象。从结果可以看出,当使用马氏距离分类器进行分类时,将PCA与Gabor滤波器配合使用,以及通过ICA方法提取的特征,识别率约为98%。该识别率比采用其他分类器技术的常规PCA和PCA + LDA方法更好。

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