Gender Recognition Based On Combining Facial and Hair Features

Chien-Cheng Lee, Chung-Shun Wei
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引用次数: 5

Abstract

This paper presents a gender recognition method by combining three types of effective features, including facial texture features, hair geometry features, and mustache features. The recognition method includes two phases which are based on the AdaBoost algorithm. In the first phase, facial and hair features are extracted from a face image and then fed into a classifier to roughly classify the image into male and female classes. In the second phase, the mustache features are added into the feature vector of the female patterns which classified into female class in the first phase. The female patterns are then classified again to correct the misclassified patterns. The FERET database is used to evaluate our method in the experiment. In the FERET data set, 659 images are chosen in which 366 of them are used as training data and the rest are regarded as test data. The best classification rate of the proposed method achieves 96.25%.
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基于面部和毛发特征结合的性别识别
本文提出了一种结合面部纹理特征、毛发几何特征和胡须特征三种有效特征的性别识别方法。该方法基于AdaBoost算法,分为两个阶段。在第一阶段,从人脸图像中提取面部和头发特征,然后将其输入分类器,将图像大致分为男性和女性两类。在第二阶段,将胡须特征加入到第一阶段分类为女性类的女性图案的特征向量中。然后再次对女性模式进行分类,以纠正错误分类的模式。实验中使用FERET数据库对我们的方法进行了评价。FERET数据集中选取了659张图像,其中366张作为训练数据,其余作为测试数据。该方法的最佳分类率达到96.25%。
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