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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Visual Classification by src='/images/tex/30155.gif' alt='ell _1'> -Hypergraph Modeling
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Visual Classification by src='/images/tex/30155.gif' alt='ell _1'> -Hypergraph Modeling

机译:通过 src =“ / images / tex / 30155.gif” alt =“ ell _1”> -超图建模

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Visual classification has attracted considerable research interests in the past decades. In this paper, a novel -hypergraph model for visual classification is proposed. Hypergraph learning, as a natural extension of graph model, has been widely used in many machine learning tasks. In previous work, hypergraph is usually constructed by attribute-based or neighborhood-based methods. That is, a hyperedge is generated by connecting a set of samples sharing a same feature attribute or in a neighborhood. However, these methods are unable to explore feature space globally or sensitive to noises. To address these problems, we propose a novel hypergraph construction approach that leverages sparse representation to generate hyperedges and learns the relationship among hyperedges and their vertices. First, for each sample, a hyperedge is generated by regarding it as the centroid and linking it as well as its nearest neighbors. Then, the sparse representation method is applied to represent the centroid vertex by other vertices within the same hyperedge. The vertices with zero coefficients are removed from the hyperedge. Finally, the representation coefficients are used to define the incidence relation between the hyperedge and the vertices. In our approach, we also optimize the hyperedge weights to modulate the effects of different hyperedges. We leverage the prior knowledge on the hyperedges so that the hyperedges sharing more vertices can have closer weights, where a graph Laplacian is used to regularize the optimization of the weights. Our approach is named -hypergraph since the sparse representation is employed in the hypergraph construction process. The method is evaluated on various visual classification tasks, and it demonstrates promising performance.
机译:在过去的几十年中,视觉分类吸引了相当多的研究兴趣。本文提出了一种用于视觉分类的新型超图模型。超图学习作为图模型的自然扩展,已被广泛用于许多机器学习任务中。在以前的工作中,通常通过基于属性或基于邻域的方法来构造超图。即,通过连接共享相同特征属性或附近的一组样本来生成超边缘。但是,这些方法无法全局探索特征空间或对噪声敏感。为了解决这些问题,我们提出了一种新颖的超图构造方法,该方法利用稀疏表示来生成超边并了解超边及其顶点之间的关系。首先,对于每个样本,通过将超边缘视为质心并将其与其最近的邻居联系起来来生成超边缘。然后,采用稀疏表示方法,通过同一超边缘内的其他顶点表示质心顶点。从超边中删除系数为零的顶点。最后,使用表示系数来定义超边和顶点之间的入射关系。在我们的方法中,我们还优化了超边缘权重,以调制不同超边缘的效果。我们利用超边缘上的先验知识,以便共享更多顶点的超边缘可以具有更近的权重,其中使用图拉普拉斯图来规范权重的优化。由于在超图构造过程中采用了稀疏表示,因此我们的方法被称为-hypergraph。该方法在各种视觉分类任务上进行了评估,并证明了其有希望的性能。

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