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Effective image annotation for searches using multilevel semantics

机译:使用多级语义进行搜索的有效图像注释

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摘要

image annotation tools to enable effective image searching in digital libraries. In this paper, we present a novel probabilistic model for image annotation based on content-based image retrieval techniques and statistical analysis. One key difficulty in applying statistical methods to the annotation of images is that the number of manually labeled images used to train the methods is normally insufficient. Numerous keywords cannot be correctly assigned to appropriate images due to lacking or missing information in the labeled image databases. To deal with this challenging problem, we also propose an enhanced model in which the annotated keywords of a new image are defined in terms of their similarity at different semantic levels, including the image level, keyword level, and concept level. To avoid missing some relevant keywords, the model labels the keywords with the same concepts as the new image. Our experimental results show that the proposed models are effective for annotating images that have different qualities of training data.
机译:图像注释工具,可在数字图书馆中进行有效的图像搜索。在本文中,我们基于基于内容的图像检索技术和统计分析,提出了一种新颖的概率图像标注模型。将统计方法应用于图像注释的一个关键困难是,用于训练这些方法的手动标记图像的数量通常不足。由于标签图像数据库中缺少或缺少信息,因此无法将大量关键字正确分配给适当的图像。为了解决这个具有挑战性的问题,我们还提出了一种增强的模型,其中,根据图像在不同语义级别(包括图像级别,关键字级别和概念级别)的相似性来定义新图像的带注释的关键字。为了避免遗漏一些相关的关键字,该模型使用与新图像相同的概念标记关键字。我们的实验结果表明,所提出的模型对于标注具有不同质量训练数据的图像是有效的。

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