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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Global plus local: A complete framework for feature extraction and recognition
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Global plus local: A complete framework for feature extraction and recognition

机译:全局加上局部:用于特征提取和识别的完整框架

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摘要

Linear discriminant analysis (LDA) is one of the most popular supervised feature extraction techniques used in machine learning and pattern classification. However, LDA only captures global geometrical structure information of the data and ignores the geometrical structure information of local data points. Though many articles have been published to address this issue, most of them are incomplete in the sense that only part of the local information is used. We show here that there are total three kinds of local information, namely, local similarity information, local intra-class pattern variation, and local inter-class pattern variation. We first propose a new method called enhanced within-class LDA (EWLDA) algorithm to incorporate the local similarity information, and then propose a complete framework called complete global-local LDA (CGLDA) algorithm to incorporate all these three kinds of local information. Experimental results on two image databases demonstrate the effectiveness of our algorithms.
机译:线性判别分析(LDA)是用于机器学习和模式分类的最流行的监督特征提取技术之一。但是,LDA仅捕获数据的全局几何结构信息,而忽略局部数据点的几何结构信息。尽管针对此问题已发表了许多文章,但从仅使用部分本地信息的意义上说,大多数文章并不完整。我们在这里显示了总共三种类型的局部信息,即局部相似性信息,局部类内模式变化和局部类间模式变化。我们首先提出一种称为增强类内LDA(EWLDA)算法的新方法来合并本地相似性信息,然后提出一个称为完整全局-本地LDA(CGLDA)算法的完整框架来合并所有这三种本地信息。在两个图像数据库上的实验结果证明了我们算法的有效性。

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