使用判别函数进行跨种族的性别分类是否可行?

Tejas I. Dhamecha, A. Sankaran, Richa Singh, Mayank Vatsa
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引用次数: 9

摘要

多年来,自动性别识别已在许多应用中使用。然而,对跨种族情景的性别认知分析研究有限。本研究旨在研究在训练资料库有限且种族差异不可见的情况下,主成分分析、线性判别分析和子类判别分析等判别函数的性能。实验是在一个包含8112张图像的异构数据库上进行的,这些图像包括光照、表情、小姿势和种族的变化。与已有文献相反,结果表明PCA与PCA+LDA、PCA+SDA和PCA+SVM相比具有相当的性能,但略好。结果还表明,即使在有限的训练样本、主成分和跨种族差异的情况下,线性判别函数也具有良好的泛化能力。
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Is gender classification across ethnicity feasible using discriminant functions?
Over the years, automatic gender recognition has been used in many applications. However, limited research has been done on analyzing gender recognition across ethnicity scenario. This research aims at studying the performance of discriminant functions including Principal Component Analysis, Linear Discriminant Analysis and Subclass Discriminant Analysis with the availability of limited training database and unseen ethnicity variations. The experiments are performed on a heterogeneous database of 8112 images that includes variations in illumination, expression, minor pose and ethnicity. Contrary to existing literature, the results show that PCA provides comparable but slightly better performance compared to PCA+LDA, PCA+SDA and PCA+SVM. The results also suggest that linear discriminant functions provide good generalization capability even with limited number of training samples, principal components and with cross-ethnicity variations.
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