基于图嵌入的Fisher判别稀疏学习图像分类

J. Gao, Xiuhong Chen
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引用次数: 0

摘要

Fisher判别字典稀疏学习(FDDL)使得Fisher判别准则受制于编码系数的图像识别结果非常有趣。但是Fisher判别准则存在数据分布假设的局限性,并且没有考虑编码系数的局部流形结构。本文将介绍一种新的基于图嵌入的Fisher判别稀疏学习(GE-FDSL)方案。首先,为了保持训练样本的类内紧性和类间可分性,我们利用图嵌入框架定义了类内紧性矩阵和类间可分性矩阵,同时考虑了编码系数的局部流形结构和标记信息;然后,在稀疏编码问题的目标函数中加入新的基于图嵌入的Fisher判别准则,使编码系数具有更强的判别能力,其中稀疏编码模型中的字典原子与类标签相关联,从而将重构误差应用于分类。该方法既能学习到结构化字典和稀疏系数,又能保持编码系数的局部流形结构。所以,他们会更有辨别力。在多个图像数据库上的实验表明,该算法具有良好的分类和识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fisher discrimination sparse learning based on graph embedding for image classification
Fisher discrimination dictionary sparse learning (FDDL) has led to interesting image recognition results where the Fisher discrimination criterion is subject to the coding coefficients. But Fisher discrimination criterion has the limitations of data distribution assumptions and does not consider the local manifold structure of the coding coefficients. In this paper, we will introduce a novel Fisher discrimination sparse learning based on graph embedding (GE-FDSL) scheme. First, we utilizes graph embedding framework to define intra-class compact matrix and inter-class separable matrix imposed on the coding coefficients of training samples to preserving the intra-class compactness and the inter-class separability for the training samples, which simultaneously consider the local manifold structure and label information of the coding coefficients. Then, a new Fisher discrimination criterion based on graph embedding is added to the object function of the sparse coding problem so that the coding coefficients have more discriminative power, where the dictionary atoms in the sparse coding model are associated with the class labels so that the reconstructed error is applied to classification. This method can learn a structured dictionary and sparse coefficients, and in the meantime, it will also keep the local manifold structure of the coding coefficients. So, they will be more discriminative. Experiments on many image databases show that the our algorithm has good classification and recognition performance.
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