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Improving Multi-label Learning with Missing Labels by Structured Semantic Correlations

机译:通过结构化语义关联改善缺少标签的多标签学习

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Multi-label learning has attracted significant interests in computer vision recently, finding applications in many vision tasks such as multiple object recognition and automatic image annotation. Associating multiple labels to a complex image is very difficult, not only due to the intricacy of describing the image, but also because of the incompleteness nature of the observed labels. Existing works on the problem either ignore the label-label and instance-instance correlations or just assume these correlations are linear and unstructured. Considering that semantic correlations between images are actually structured, in this paper we propose to incorporate structured semantic correlations to solve the missing label problem of multi-label learning. Specifically, we project images to the semantic space with an effective semantic descriptor. A semantic graph is then constructed on these images to capture the structured correlations between them. We utilize the semantic graph Laplacian as a smooth term in the multi-label learning formulation to incorporate the structured semantic correlations. Experimental results demonstrate the effectiveness of the proposed semantic descriptor and the usefulness of incorporating the structured semantic correlations. We achieve better results than state-of-the-art multi-label learning methods on four benchmark datasets.
机译:最近,多标签学习在计算机视觉中引起了极大的兴趣,在许多视觉任务中找到了应用,例如多对象识别和自动图像标注。不仅由于描述图像的复杂性,而且由于观察到的标签的不完整性,将多个标签与复杂图像关联起来非常困难。现有的解决该问题的方法要么忽略了label-label和instance-instance相关性,要么只是假设这些相关性是线性且非结构化的。考虑到图像之间的语义相关性实际上是结构化的,因此本文提出结合结构化的语义相关性来解决多标签学习中的缺失标签问题。具体来说,我们使用有效的语义描述符将图像投影到语义空间。然后在这些图像上构建语义图,以捕获它们之间的结构化相关性。我们将语义图拉普拉斯算子作为多标签学习公式中的平滑术语,以纳入结构化语义相关性。实验结果证明了所提出的语义描述符的有效性以及合并结构化语义相关性的有用性。在四个基准数据集上,我们比最先进的多标签学习方法获得更好的结果。

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