基于双流形学习的图像分类新方法

Li-Hua Ye, R. Zhu, Jie Xu
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引用次数: 1

摘要

针对基于语义的图像理解中存在的两类分类问题,提出了一种基于双流形学习的分类方法,将分类问题从高维数据空间转化为低维特征空间。首先根据正样本与负样本的显著性差异,分别建立两个具有不同内在维数的流形,采用基于全局邻域的局部线性嵌入(GNLLE)算法进行降维,同时进行无监督聚类。然后考虑相似样本的分组特征,计算每个流形的聚集中心;在此基础上,通过距离伴侣对双流形学习模型构造了新的分类器。实验表明,该方法不仅能更准确地反映整个数据的拓扑结构,而且能更有效地实现分类性能,易于扩展到多分类流形学习中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Image Classification Method Based on Double Manifold Learning
To solve the two-class classification problem existing in semantic-based image understanding, a novel classification method based on double manifold learning is proposed, which can transform the classification problem from a high-dimensional data space to a feature space with lower dimensionality. Two manifolds with different intrinsic dimensionalities will be first established separately, according to the significant differences between the positive samples and the negative ones, where globular neighborhood-based locally linear embedding (GNLLE) algorithm is adopted to implement dimensionality reduction and meantime unsupervised clustering. Then the aggregation center of each manifold is calculated, taking into account the grouping characteristics of similar samples. Furthermore, a new classifier is constructed for a double manifold learning model via distance companion. Finally experiments indicate that our method, which can be easily extended to multi-classification manifold learning, will not only reflect the topological structure of the whole data more precisely, but also achieve performance of classification more efficiently.
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