IEEE Trans Neural Netw Learn Syst. 2017 Feb;28(2):278-293. doi: 10.1109/TNNLS.2015.2508025. Epub 2015 Dec 24.
Locality and label information of training samples play an important role in image classification. However, previous dictionary learning algorithms do not take the locality and label information of atoms into account together in the learning process, and thus their performance is limited. In this paper, a discriminative dictionary learning algorithm, called the locality-constrained and label embedding dictionary learning (LCLE-DL) algorithm, was proposed for image classification. First, the locality information was preserved using the graph Laplacian matrix of the learned dictionary instead of the conventional one derived from the training samples. Then, the label embedding term was constructed using the label information of atoms instead of the classification error term, which contained discriminating information of the learned dictionary. The optimal coding coefficients derived by the locality-based and label-based reconstruction were effective for image classification. Experimental results demonstrated that the LCLE-DL algorithm can achieve better performance than some state-of-the-art algorithms.
训练样本的局部和标签信息在图像分类中起着重要作用。然而,以前的字典学习算法在学习过程中并没有同时考虑原子的局部和标签信息,因此它们的性能受到限制。本文提出了一种判别字典学习算法,称为局部约束和标签嵌入字典学习(LCLE-DL)算法,用于图像分类。首先,使用学习字典的图拉普拉斯矩阵而不是传统的基于训练样本的图拉普拉斯矩阵来保留局部信息。然后,使用原子的标签信息而不是包含学习字典判别信息的分类误差项来构建标签嵌入项。基于局部和基于标签的重构得到的最优编码系数对图像分类是有效的。实验结果表明,LCLE-DL 算法的性能优于一些先进的算法。