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Globally maximizing, locally minimizing : unsupervised discriminant projection with applications to face and palm biometrics

机译:全球最大化,局部最小化:无监督判别投影,应用于面部和手掌生物识别

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摘要

This paper develops an unsupervised discriminant projection (UDP) technique for dimensionality reduction of high-dimensional data in small sample size cases. UDP can be seen as a linear approximation of a multimanifolds-based learning framework which takes into account both the local and nonlocal quantities. UDP characterizes the local scatter as well as the nonlocal scatter, seeking to find a projection that simultaneously maximizes the nonlocal scatter and minimizes the local scatter. This characteristic makes UDP more intuitive and more powerful than the most up-to-date method, Locality Preserving Projection (LPP), which considers only the local scatter for clustering or classification tasks. The proposed method is applied to face and palm biometrics and is examined using the Yale, FERET, and AR face image databases and the PolyU palmprint database. The experimental results show that UDP consistently outperforms LPP and PCA and outperforms LDA when the training sample size per class is small. This demonstrates that UDP is a good choice for real-world biometrics applications.
机译:本文开发了一种无监督的判别投影(UDP)技术,用于在小样本量情况下减少高维数据的维数。 UDP可以看作是基于多流形的学习框架的线性近似,它同时考虑了本地和非本地数量。 UDP既可以描述局部散点,也可以描述非局部散点,它试图找到一种投影,该投影可以同时最大化非局部散点和最小化局部散点。此特性使UDP比最新方法本地保存投影(LPP)更直观,功能更强大,该方法仅考虑用于群集或分类任务的本地散布。所提出的方法应用于面部和手掌的生物特征识别,并使用Yale,FERET和AR面部图像数据库和PolyU掌纹数据库进行了检查。实验结果表明,当每班训练样本量较小时,UDP始终优于LPP和PCA,并且优于LDA。这表明UDP是实际生物识别应用程序的不错选择。

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