基于标签分类的区域标注字典学习

Jingjing Zheng, Zhuolin Jiang
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引用次数: 9

摘要

图像区域的标签通常根据其语义进行分层分类。本文在给定标签分类的基础上,提出联合学习多层层次字典和相应的线性分类器进行区域标注。具体来说,我们为分类法中的每个标记节点生成一个特定于节点的字典,然后将每个级别的特定于节点的字典连接起来,以构造一个特定于级别的字典。在节点字典之间的关系中保留了标签之间的层次语义结构。同时,将使用特定级别字典获得的稀疏码汇总为最终的特征表示,以设计线性分类器。我们的方法不仅利用从更高层次获得的稀疏代码来帮助学习更低层次的分类器,而且还鼓励具有相同父标记节点的较低层次的标记节点隐式共享从更高层次获得的稀疏代码。使用三个基准数据集的实验结果表明,该方法比最近提出的方法具有最好的性能。
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Tag Taxonomy Aware Dictionary Learning for Region Tagging
Tags of image regions are often arranged in a hierarchical taxonomy based on their semantic meanings. In this paper, using the given tag taxonomy, we propose to jointly learn multi-layer hierarchical dictionaries and corresponding linear classifiers for region tagging. Specifically, we generate a node-specific dictionary for each tag node in the taxonomy, and then concatenate the node-specific dictionaries from each level to construct a level-specific dictionary. The hierarchical semantic structure among tags is preserved in the relationship among node-dictionaries. Simultaneously, the sparse codes obtained using the level-specific dictionaries are summed up as the final feature representation to design a linear classifier. Our approach not only makes use of sparse codes obtained from higher levels to help learn the classifiers for lower levels, but also encourages the tag nodes from lower levels that have the same parent tag node to implicitly share sparse codes obtained from higher levels. Experimental results using three benchmark datasets show that the proposed approach yields the best performance over recently proposed methods.
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