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Eyebrow shape-based features for biometric recognition and gender classification: A feasibility study

机译:基于眉形的生物特征识别和性别分类功能:可行性研究

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A wide variety of applications in forensic, government, and commercial fields require reliable personal identification. However, the recognition performance is severely affected when encountering non-ideal images caused by motion blur, poor contrast, various expressions, or illumination artifacts. In this paper, we investigated the use of shape-based eyebrow features under non-ideal imaging conditions for biometric recognition and gender classification. We extracted various shape-based features from the eyebrow images and compared three different classification methods: Minimum Distance Classifier (MD), Linear Discriminant Analysis Classifier (LDA) and Support Vector Machine Classifier (SVM). The methods were tested on images from two publicly available facial image databases: The Multiple Biometric Grand Challenge (MBGC) database and the Face Recognition Grand Challenge (FRGC) database. Obtained recognition rates of 90% using the MBGC database and 75% using the FRGC database as well as gender classification recognition rates of 96% and 97% for each database respectively, suggests the shape-based eyebrow features maybe be used for biometric recognition and soft biometric classification.
机译:法医,政府和商业领域的各种应用都需要可靠的个人身份证明。但是,当遇到由运动模糊,对比度差,各种表达式或照明伪像引起的非理想图像时,识别性能会受到严重影响。在本文中,我们调查了非理想成像条件下基于形状的眉毛特征在生物识别和性别分类中的使用。我们从眉毛图像中提取了各种基于形状的特征,并比较了三种不同的分类方法:最小距离分类器(MD),线性判别分析分类器(LDA)和支持向量机分类器(SVM)。该方法在来自两个公开的面部图像数据库的图像上进行了测试:多重生物特征识别大挑战(MBGC)数据库和面部识别大挑战(FRGC)数据库。使用MBGC数据库获得90%的识别率,使用FRGC数据库获得75%的识别率,以及每个数据库的性别分类识别率分别为96%和97%,表明基于形状的眉毛特征可用于生物识别和柔软生物识别分类。

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