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Improving generalization for gender classification

机译:改善性别分类的概括

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This paper addresses the problem of improving the generalization ability for gender classification. An approach based on Fuzzy SVM (FSVM) is developed to improve it. The fuzzy membership used in FSVM indicates the degree of one person’s face belonging to female/male faces. Based on Learning Vector Quantization (LVQ) learning process, a novel method of generating fuzzy membership function automatically is proposed in this paper. The method doesn’t rely on the apriori information of data and generates the membership function as objective as may be. The gender classifier based on FSVM is evaluated on the FERET, CAS-PEAL, BUAA-IRIP face databases. The results show that the gender classifier presented in this paper can tolerate more variations such as illumination, expression and pose and show good performance in generalization ability.
机译:本文涉及提高性别分类泛化能力的问题。开发了一种基于模糊SVM(FSVM)的方法来改进它。 FSVM中使用的模糊会员资格表示属于女性/男性面孔的人脸的程度。基于学习矢量量化(LVQ)学习过程,本文提出了一种自动产生模糊隶属函数的新方法。该方法不依赖于数据的APRiorI信息,并将成员身份函数作为目标。基于FSVM的性别分类器在Furet,Cas-Peal,Buaa-Irip面部数据库上进行评估。结果表明,本文提出的性别分类器可以容忍更多的变化,例如照明,表达和姿势,并在泛化能力中表现出良好的性能。

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