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Deep CNN with Graph Laplacian Regularization for Multi-label Image Annotation

机译:具有图Laplacian alnotation的Graph Laplacian正则化的深CNN

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To compensate for incomplete or imprecise tags in training samples, this paper proposes a learning algorithm for the convolutional neural network (CNN) for multi-label image annotation by introducing co-occurrence dependency between tags as a graph Laplacian regularization term. To exploit the co-occurrence dependency, we apply Hayashi's quantification method-type III to the tags in the training samples and use the distances between the acquired representative vectors to define the weights for graph Laplacian regularization. By introducing this regularization term, the possibility of co-occurrence between tags with high co-occurrence frequency can be increased. To confirm the effectiveness of the proposed algorithm, we have done experiments using Corel5k's dataset for multi-label image annotation.
机译:为了补偿训练样本中的不完整或不精确的标签,本文提出了一种通过在标记之间引入标记之间的共出依赖性作为图Laplacian正则化术语来提出用于多标签图像注释的卷积神经网络(CNN)的学习算法。为了利用共同发生依赖性,我们将Hayashi的量化方法III应用于训练样本中的标签,并使用所获取的代表向量之间的距离来定义图表Laplacian正则化的权重。通过引入这个正则化术语,可以增加具有高共发生频率的标签之间的共发生的可能性。为了确认所提出的算法的有效性,我们使用Corel5k的数据集进行了实验,用于多标签图像注释。

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