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首页> 外文期刊>Current Journal of Applied Science and Technology >Gender Classification and Age Detection Based onHuman Facial Features Using Multi- Class SVM
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Gender Classification and Age Detection Based onHuman Facial Features Using Multi- Class SVM

机译:使用多类支持向量机的基于人脸特征的性别分类和年龄检测

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摘要

Gender classification is a binary classification problem, which can be stated as inferring female or male from a collection of facial images. Although there exist different methods for gender classification, such as gait, iris, hand shape and hair, yet the prominent methods to achieve the goal is based on facial features.In this paper, novel methodologies has been proposed to achieve the goal of (1) gender classification and (2) age detection in three step process. Firstly, input image set are pre- processed to perform noise removal, histogram equalization, size normalization and then face detection is performed. Secondly, Feature Extraction from facial image is performed. Finally to evaluate the performance of the proposed algorithm, experiments have been performed on various image set that contain equal proportion of male and female by using suitable binary SVM classifier which will classify the data set into two categories i.e male or female. To achieve the second goal, Multi- class SVM have been employed which will generate three classes i.e child, adult and old. The age of the input images are detected and classified into one of the three category.
机译:性别分类是一个二元分类问题,可以说是从面部图像集合中推断出女性或男性。尽管存在不同的性别分类方法,例如步态,虹膜,手形和头发,但达到目标的主要方法是基于面部特征。本文提出了新颖的方法来实现(1 )性别分类和(2)三步过程中的年龄检测。首先,对输入图像集进行预处理以执行噪声去除,直方图均衡化,尺寸归一化,然后执行面部检测。其次,从面部图像进行特征提取。最后,为评估所提出算法的性能,已通过使用合适的二进制SVM分类器对包含相等比例的男性和女性的各种图像集进行了实验,该分类器会将数据集分为男性或女性两类。为了实现第二个目标,已采用了多类支持向量机,它将生成三类,即儿童,成人和老人。检测输入图像的年龄并将其分类为三个类别之一。

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