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Multi-label Image Annotation Based on Neighbor Pair Correlation Chain

机译:基于邻居对相关链的多标签图像标注

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摘要

Image annotation plays an important role in content-based image understanding, various machine learning methods have been proposed to solve this problem. In this paper, label correlation is considered as an undirected bipartite graph, in which each label are correlated by some common hidden topics. As a result, given a label, random walk with restart on the graph supplies a most related label, repeating this precedure leads to a label chain, which keep each adjacent labels pair correlated as maximally as possible. We coordinate the labels chain with its respective classifier training on bottom feature, and guide a classifier chain to annotate an image. The experiment illustrates that our method outperform both the baseline and another popular method.
机译:图像标注在基于内容的图像理解中起着重要的作用,已经提出了各种机器学习方法来解决这个问题。在本文中,标签相关性被视为无向二分图,其中每个标签都由一些常见的隐藏主题相关联。结果,给定一个标签,图上重新启动的随机游走会提供最相关的标签,重复此过程会导致一个标签链,从而使每个相邻的标签对保持最大关联。我们将标签链与其在底部特征上的各自分类器训练进行协调,并引导分类器链对图像进行注释。实验表明,我们的方法优于基线方法和另一种流行方法。

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