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Discriminant Neighborhood Structure Embedding Using Trace Ratio Criterion for Image Recognition

机译:基于迹线比率判别的判别邻域结构嵌入

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Dimensionality reduction is very important in pattern recognition, machine learning, and image recognition. In this paper, we propose a novel linear dimensionality reduction technique using trace ratio criterion, namely Discriminant Neighbourhood Structure Embedding Using Trace Ratio Criterion (TR-DNSE). TR-DNSE preserves the local intrinsic geometric structure, characterizing properties of similarity and diversity within each class, and enforces the separability between different classes by maximizing the sum of the weighted distances between nearby points from different classes. Experiments on four image databases show the effectiveness of the proposed approach.
机译:降维在模式识别,机器学习和图像识别中非常重要。在本文中,我们提出了一种使用迹线比率准则的线性降维技术,即使用迹线比率准则进行判别的邻域结构嵌入(TR-DNSE)。 TR-DNSE保留了本地固有的几何结构,表征了每个类别内的相似性和多样性,并通过最大化不同类别附近点之间的加权距离之和来加强不同类别之间的可分离性。在四个图像数据库上的实验表明了该方法的有效性。

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