研究图像标注中局部语义概念的分布与局部关键点的关系

Yousef Alqasrawi, D. Neagu
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引用次数: 0

摘要

图像标注问题越来越受到计算机视觉研究者的关注。很少有研究涉及在区域层面使用视觉词袋进行场景标注。本文的目的是研究局部语义概念的分布与局部关键点之间的关系,这些局部关键点位于用这些语义概念标记的图像区域中。在此基础上,我们研究了视觉词袋模型能否有效地表示自然场景图像区域的内容,从而对图像进行局部语义概念标注。此外,本文还提出了从全局到局部的方法,研究了使用一般场景类别生成的视觉词汇在区域层面构建视觉词汇包的影响。在包含6个类别的自然场景数据集上进行了广泛的实验。研究结果表明,使用BOW模型来表示图像区域的语义信息是可行的。
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Investigating the relationship between the distribution of local semantic concepts and local keypoints for image annotation
The problem of image annotation has gained increasing attention from many researchers in computer vision. Few works have addressed the use of bag of visual words for scene annotation at region level. The aim of this paper is to study the relationship between the distribution of local semantic concepts and local keypoints located in image regions labelled with these semantic concepts. Based on this study, we investigate whether bag of visual words model can be used to efficiently represent the content of natural scene image regions, so images can be annotated with local semantic concepts. Also, this paper presents local from global approach which study the influence of using visual vocabularies generated from general scene categories to build bag of visual words at region level. Extensive experiments are conducted over a natural scene dataset with six categories. The reported results have shown the plausibility of using the BOW model to represent the semantic information of image regions.
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