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Gender classification with Local Zernike Moments and local binary patterns

机译:具有局部Zernike矩和局部二元模式的性别分类

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This study provides a new feature extraction method to gender classification. Local Zernike Moments is a method used for face recognition and proved that it is more successful than Gabor or LBP representations. In this study, LZM method is used for gender classification on FERET and LFW databases and demonstrated that it is more successful than LBP method on both databases. In the light of analysis done on the test results of these two methods, a new hybrid feature method built by combining LZM and LBP features is created and the performance rates are achieved as 99.57% for FERET and 97.71% for LFW databases by using Support Vector Machines (SVM) classifier. This indicates the superiority of the proposed method over suggested methods for gender classification on both controlled environment and real-world images.
机译:该研究为性别分类提供了一种新的特征提取方法。局部Zernike矩是一种用于人脸识别的方法,并证明它比Gabor或LBP表示更为成功。在这项研究中,LZM方法用于FERET和LFW数据库的性别分类,并证明在两个数据库上它都比LBP方法更成功。根据对这两种方法的测试结果进行的分析,创建了一种新的混合特征方法,该方法将LZM和LBP特征相结合而构建,通过使用支持向量,FERET的性能率为99.57%,LFW数据库的性能率为97.71%。机器(SVM)分类器。这表明在受控环境和真实世界图像上,所提出的方法优于建议的性别分类方法。

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