IEEE Trans Image Process. 2017 Jan;26(1):452-463. doi: 10.1109/TIP.2016.2621671. Epub 2016 Oct 26.
Graph model is emerging as a very effective tool for learning the complex structures and relationships hidden in data. In general, the critical purpose of graph-oriented learning algorithms is to construct an informative graph for image clustering and classification tasks. In addition to the classical K-nearest-neighbor and r-neighborhood methods for graph construction, l-graph and its variants are emerging methods for finding the neighboring samples of a center datum, where the corresponding ingoing edge weights are simultaneously derived by the sparse reconstruction coefficients of the remaining samples. However, the pairwise links of l-graph are not capable of capturing the high-order relationships between the center datum and its prominent data in sparse reconstruction. Meanwhile, from the perspective of variable selection, the l norm sparse constraint, regarded as a LASSO model, tends to select only one datum from a group of data that are highly correlated and ignore the others. To simultaneously cope with these drawbacks, we propose a new elastic net hypergraph learning model, which consists of two steps. In the first step, the robust matrix elastic net model is constructed to find the canonically related samples in a somewhat greedy way, achieving the grouping effect by adding the l penalty to the l constraint. In the second step, hypergraph is used to represent the high order relationships between each datum and its prominent samples by regarding them as a hyperedge. Subsequently, hypergraph Laplacian matrix is constructed for further analysis. New hypergraph learning algorithms, including unsupervised clustering and multi-class semi-supervised classification, are then derived. Extensive experiments on face and handwriting databases demonstrate the effectiveness of the proposed method.
图模型正成为一种非常有效的工具,用于学习隐藏在数据中的复杂结构和关系。一般来说,面向图的学习算法的关键目的是为图像聚类和分类任务构建一个信息丰富的图。除了用于图构建的经典K近邻和r邻域方法外,l-图及其变体是用于寻找中心数据的相邻样本的新兴方法,其中相应的入边权重由其余样本的稀疏重建系数同时导出。然而,l-图的成对链接无法捕捉稀疏重建中中心数据与其显著数据之间的高阶关系。同时,从变量选择的角度来看,被视为LASSO模型的l范数稀疏约束倾向于从一组高度相关的数据中仅选择一个数据而忽略其他数据。为了同时应对这些缺点,我们提出了一种新的弹性网超图学习模型,它由两个步骤组成。第一步,构建鲁棒矩阵弹性网模型以以某种贪婪的方式找到典型相关样本,通过在l约束上添加l惩罚来实现分组效果。第二步,通过将每个数据及其显著样本视为超边,使用超图来表示它们之间的高阶关系。随后,构建超图拉普拉斯矩阵进行进一步分析。然后推导了包括无监督聚类和多类半监督分类在内的新的超图学习算法。在人脸和手写数据库上的大量实验证明了所提方法的有效性。