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Automatic image annotation by semi-supervised manifold kernel density estimation

机译:通过半监督流形核密度估计自动标注图像

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摘要

The insufficiency of labeled training data is a major obstacle in automatic image annotation. To tackle this problem, we propose a semi-supervised manifold kernel density estimation (SSMKDE) approach based on a recently proposed manifold KDE method. Our contributions are twofold. First, SSMKDE leverages both labeled and unlabeled samples and formulates all data in a manifold structure, which enables a more accurate label prediction. Second, the relationship between KDE-based methods and graph-based semi-supervised learning (SSL) methods is analyzed, which helps to better understand graph-based SSL methods. Extensive experiments demonstrate the superiority of SSMKDE over existing KDE-based and graph-based SSL methods.
机译:带标签的训练数据不足是自动图像注释中的主要障碍。为了解决这个问题,我们提出了一种基于最近提出的流形KDE方法的半监督流形核密度估计(SSMKDE)方法。我们的贡献是双重的。首先,SSMKDE利用加标签的和未加标签的样本,并以多方面的结构制定所有数据,从而实现更准确的标签预测。其次,分析了基于KDE的方法和基于图的半监督学习(SSL)方法之间的关系,这有助于更好地理解基于图的SSL方法。大量的实验证明了SSMKDE优于现有的基于KDE和基于图的SSL方法。

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