基于自适应图约束的判别分析字典学习图像分类

Zhengmin Li, Haoran Hong
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引用次数: 0

摘要

系数矩阵的判别在判别分析字典学习(ADL)模型中起着重要的作用。然而,轮廓的局部几何结构(即。在判别式ADL算法中,很少利用系数矩阵的行向量来设计判别式项。本文提出了一种基于自适应图约束(DADL-AGC)模型的判别式ADL算法,该算法能够自适应地保留剖面的局部几何结构信息。首先,通过最大化轮廓相似矩阵的信息熵,构造自适应图约束模型;这样,通过K-means方法初始化分析字典,系数矩阵可以保留和继承分析原子和训练样本的局部几何信息。此外,还学习了一个鲁棒的线性分类器,以提高我们的DADL-AGC算法的分类性能。在四种深度特征和手工特征数据库上,实验结果表明,我们的DADL-AGC算法比七种ADL和合成字典学习算法取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminative Analysis Dictionary Learning With Adaptive Graph Constraint for Image Classification
Discrimination of coefficient matrix plays an important role in discriminative analysis dictionary learning (ADL) model. However, the local geometric structure of the profiles(i.e., row vector of coefficient matrix) is seldom exploited to design discriminative terms in the discriminative ADL algorithms. In this paper, we proposed a discriminative ADL algorithm with adaptive graph constrained (DADL-AGC)model, which can adaptively preserve the local geometric structure information of profiles. First, we construct an adaptive graph constrained model by maximizing the information entropy of the similarity matrix of profiles. In this way, the coefficient matrix can preserve and inherit the local geometric information of analysis atoms and training samples by using the K-means method to initialize the analysis dictionary. Moreover, a robust linear classifier is simultaneously learned to improve the classification performance of our DADL-AGC algorithm. On the four deep features and hand-crafted features databases, experimental results demonstrate that our DADL-AGC algorithm can achieve better performance than seven ADL and synthesis dictionary learning algorithms.
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