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Image categorization using a semantic hierarchy model with sparse set of salient regions

机译:使用具有显着区域稀疏集的语义层次模型进行图像分类

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摘要

Image categorization in massive image database is an important problem. This paper proposes an approach for image categorization, using sparse set of salient semantic information and hierarchy semantic label tree (HSLT) model. First, to provide more critical image semantics, the proposed sparse set of salient regions only at the focuses of visual attention instead of the entire scene was formed by our proposed saliency detection model with incorporating low and high level feature and Shotton's semantic texton forests (STFs) method. Second, we also propose a new HSLT model in terms of the sparse regional semantic information to automatically build a semantic image hierarchy, which explicitly encodes a general to specific image relationship. And last, we archived image dataset using image hierarchical semantic, which is help to improve the performance of image organizing and browsing. Extension experimental results showed that the use of semantic hierarchies as a hierarchical organizing framework provides a better image annotation and organization, improves the accuracy and reduces human's effort.
机译:海量图像数据库中的图像分类是一个重要的问题。本文提出了一种基于显着语义信息的稀疏集合和层次语义标签树(HSLT)模型的图像分类方法。首先,为了提供更关键的图像语义,我们提出的显着性检测模型(结合了低层和高层特征以及Shotton的森林语义文本(STF))形成了仅在视觉注意的焦点而不是整个场景的稀疏显着区域集。 ) 方法。其次,我们还根据稀疏的区域语义信息提出了一个新的HSLT模型,以自动建立语义图像层次结构,该层次结构显式地编码了一般图像到特定图像之间的关系。最后,我们使用图像分层语义对图像数据集进行归档,这有助于提高图像组织和浏览的性能。扩展实验结果表明,将语义层次结构用作层次结构组织框架可以提供更好的图像注释和组织,提高准确性,并减少人员的工作量。

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