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Classifying Signals on Irregular Domains via Convolutional Cluster Pooling

机译:通过卷积聚类池对不规则域上的信号进行分类

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We present a novel and hierarchical approach for supervised classification of signals spanning over a fixed graph, reflecting shared properties of the dataset. To this end, we introduce a Convolutional Cluster Pooling layer exploiting a multi-scale clustering in order to highlight, at different resolutions, locally connected regions on the input graph. Our proposal generalises well-established neural models such as Convolutional Neural Networks (CNNs) on irregular and complex domains, by means of the exploitation of the weight sharing property in a graph-oriented architecture. In this work, such property is based on the centrality of each vertex within its soft-assigned cluster. Extensive experiments on NTU RGB+D, CIFAR-10 and 20NEWS demonstrate the effectiveness of the proposed technique in capturing both local and global patterns in graph-structured data out of different domains.
机译:我们提出了一种新颖的分层方法,用于对固定图上的信号进行监督分类,反映了数据集的共享属性。为此,我们引入了利用多尺度聚类的卷积聚类池层,以便以不同的分辨率突出显示输入图上的本地连接区域。我们的建议通过利用面向图的体系结构中的权重分配特性,对不规则域和复杂域上的卷积神经网络(CNN)等公认的神经模型进行泛化。在这项工作中,这种属性是基于每个顶点在其软分配群集内的中心性。在NTU RGB + D,CIFAR-10和20NEWS上进行的大量实验证明了该技术在捕获来自不同域的图结构化数据中捕获局部和全局模式方面的有效性。

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