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Deep graph fusion for graph based label propagation

机译:深度图融合,用于基于图的标签传播

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A graph which represents the similarity between samples plays an important role in graph-based semi-supervised learning. Though for this case one of the most important keys is the feature descriptor used for similarity calculation. Recently deep neural networks have been expressed as powerful methods which simultaneously perform feature extraction and classification. Moreover, feature fusion at different levels can improve the performance. The contributions in this article are as follows; first, we use deep features that are extracted from the last layers of Convolutional Neural Network for graph construction. Second, we adopt feature fusion to improve discriminability. Thirdly, we propose deep graph fusion as a way to combine information while preserving the inlying structure of each descriptor. The experiments are conducted on two face databases and the proposed method is compared with three hand-crafted features. The results obtained using three label propagation techniques show that the use of deep features can improve the performance compared to hand-crafted features. Moreover, the fusion in graph level can improve the results compared to the use of each deep feature alone.
机译:表示样本之间相似性的图在基于图的半监督学习中起着重要作用。尽管在这种情况下,最重要的键之一是用于相似度计算的特征描述符。近年来,深层神经网络已被表达为可同时执行特征提取和分类的强大方法。此外,不同级别的特征融合可以提高性能。本文的贡献如下:首先,我们使用从卷积神经网络的最后一层提取的深层特征进行图形构建。其次,我们采用特征融合来提高可分辨性。第三,我们提出深度图融合作为一种在保留每个描述符的内在结构的同时合并信息的方法。实验是在两个人脸数据库上进行的,并将所提出的方法与三个手工特征进行了比较。使用三种标签传播技术获得的结果表明,与手工制作的特征相比,使用深层特征可以提高性能。此外,与单独使用每个深层特征相比,图形级别的融合可以改善结果。

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