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首页> 外文期刊>IEEE transactions on multimedia >Adaptive Hypergraph Embedded Semi-Supervised Multi-Label Image Annotation
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Adaptive Hypergraph Embedded Semi-Supervised Multi-Label Image Annotation

机译:自适应超图嵌入式半监督多标签图像注释

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摘要

Multilabel image annotation attracts a lot of research interest due to its practicability in multimedia and computer vision fields, while the need for a large amount of labeled training data to achieve promising performance makes it a challenging task. Fortunately, unlabeled and relevant data are widely available and these data can be used to serve the annotation task. To this end, we propose a novel adaptive hypergraph learning (AHL) method for multilabel image annotation in a semisupervised way, in which both the limited labeled data and abundant unlabeled data are utilized to facilitate the annotation performance. In detail, we seek a multilabel propagation scheme by learning a hypergraph which is used to preserve the local geometric structures of data in a high-order manner. Meanwhile, a feature projection is integrated into AHL to obtain a latent feature space where unlabeled instances can be effectively and robustly assigned with multiple labels. Experiments on six widely used image datasets are conducted to evaluate our model and the results demonstrate that the proposed AHL outperforms other state-of-the-art semisupervised methods.
机译:多标签图像注释由于其在多媒体和计算机视觉领域的实用性而吸引了许多研究兴趣,而需要大量的标签训练数据来实现有希望的性能使其成为一项具有挑战性的任务。幸运的是,未标记和相关的数据广泛可用,并且这些数据可用于执行注释任务。为此,我们提出了一种用于半监督方式的多标签图像注释的新型自适应超图学习(AHL)方法,该方法同时利用有限的标记数据和大量的未标记数据来促进注释性能。详细地说,我们通过学习一个超图来寻求一种多标签传播方案,该超图用于以高阶方式保留数据的局部几何结构。同时,将特征投影集成到AHL中以获得潜在的特征空间,在其中可以为未标记的实例有效且强大地分配多个标签。对六个广泛使用的图像数据集进行了实验以评估我们的模型,结果表明,提出的AHL优于其他最新的半监督方法。

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