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Age classification using facial feature extraction on female and male images

机译:使用面部特征提取对女性和男性图像进行年龄分类

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This paper presents age classification on facial images using subpattern-based Local Binary Patterns (LBP) method. Classification of age intervals are conducted separately on female and male facial images since the aging process for female and male is different for human beings in real life. The age classification performance of the holistic approaches is compared with the performance of subpattern-based LBP approach in order to demonstrate the performance differences between these two types of approaches. To be consistent with the research of others, our work has been tested on two publicly available databases namely FGNET and MORPH. The experiments are performed on these aging databases to demonstrate the age classification performance on female and male facial images of human beings using subpatternbased LBP method with several parameter settings. The results are then compared with the results of age classification of the holistic PCA and holistic subspace LDA methods.
机译:本文使用基于子模式的局部二进制模式(LBP)方法对面部图像进行年龄分类。由于在现实生活中女性和男性的衰老过程不同,因此对女性和男性面部图像分别进行年龄间隔的分类。将整体方法的年龄分类性能与基于子模式的LBP方法的性能进行比较,以证明这两种方法之间的性能差异。为了与他人的研究保持一致,我们的工作已经在两个公共数据库FGNET和MORPH上进行了测试。在这些老化数据库上进行了实验,以演示使用具有多个参数设置的基于子模式的LBP方法对人的女性和男性面部图像进行年龄分类的性能。然后将结果与整体PCA和整体子空间LDA方法的年龄分类结果进行比较。

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