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An Experimental Study of Different Features for Face Recognition

机译:人脸识别不同特征的实验研究

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As a first study, the use the Gabor filter bank is made to generate features for face recognition. The features so obtained on the application of SVM classifier yields accuracy rate of 96.2%. With a view to improve the performance, two more feature types, viz., wavelet features and wavelet-fuzzy features resulting from the application of 2D wavelet transform on the Composite detail images and the Approximate images at 3 levels of decomposition, are devised. The ROCs of three feature types show that wavelet-fuzzy features have a better performance. The performance of Gabor features is slightly inferior to that of wavelet-fuzzy features. The algorithm was tested on ORL (Olivetti Research Laboratory) database that has slight orientations in face images.
机译:作为第一个研究,使用Gabor滤波器组来生成用于面部识别的特征。通过使用SVM分类器获得的特征产生的准确率为96.2%。为了提高性能,设计了另外两种特征类型,即小波特征和小波模糊特征,这些特征是通过将2D小波变换应用于合成细节图像和3个分解级别的近似图像而得到的。三种特征类型的ROC表明,小波模糊特征具有更好的性能。 Gabor特征的性能略逊于小波模糊特征。该算法在ORL(Olivetti研究实验室)数据库中进行了测试,该数据库在人脸图像中具有轻微的方向。

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