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Age estimation from a face image in a selected gender-race group based on ranked local binary patterns

机译:根据排名的本地二进制模式,根据所选性别种族组中的面部图像估算年龄

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Abstract An algorithm to classify people by age from face images based on a two-stage support vector regression is proposed. Only the most significant local binary patterns are used as descriptive features of an image. The distinctive feature of the proposed approach is in the use of a sequential procedure that involves classifying images of people first by gender, then by race in each gender group and only then by age within a selected gender-race group. In order to increase the accuracy of the classification, a bootstrapping procedure (learning on “hard” examples) is used at each stage. The use of this approach has made it possible to improve an accuracy of the classification by 12% for gender, by 15% for race and by 2 years for age (the Mean Absolute Error metric) in comparison with other known algorithms.
机译:摘要提出了一种基于两阶段支持向量回归的人脸图像年龄分类算法。仅将最重要的本地二进制模式用作图像的描述性特征。所提出的方法的独特之处在于使用了一种顺序过程,该过程涉及首先按性别对人的图像进行分类,然后按每个性别组中的种族进行分类,然后才按所选性别种族组中的年龄进行分类。为了提高分类的准确性,在每个阶段都使用了引导过程(学习“硬”示例)。与其他已知算法相比,这种方法的使用使性别分类的准确性提高了12%,种族提高了15%,年龄提高了2年(平均绝对误差度量)。

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