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An efficient refinement algorithm for multi-label image annotation with correlation model

机译:具有相关模型的多标签图像标注的高效细化算法

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摘要

With the explosively rising popularity of photography devices, collections of personal digital images are growing rapidly both in number and size. There is an increasing desire to effectively index and search these images to meet user requirements. The content-based image retrieval (CBIR) system facilitates effective image indexing and retrieval according to image features. However, the semantic gap between the low-level visual features and high-level semantic concepts hinders further development. Image annotation is a solution intended to resolve the CBIR system inadequacies. However, there are two problems with the annotation. (1) It is very difficult to represent an image using only a few keywords; (2) the manual annotation process is very subjective, ambiguous, and incomplete. This paper focuses on refining image annotation to cluster the most representative keywords, as the annotations to image with a small semantic gap. We propose the Hierarchical_Twin Rings algorithm to refine the quality of annotations in order to close the well-known semantic gap problem. Moreover, we present another Centroid-based Convergence method of automatically assigning relevant multi-keywords to a user specified image which could greatly improve the retrieval accuracy and fast response requirement. The key contributions of our work areas follows: (1) Weintroduce the problem of the mining of representative image keywords as the annotation for image indexing and retrieval from a large set of image collection. (2) We use Bayesian framework to integrate the image and image annotation into a unifiedframework. (3) Our formulation allows one to refine the relevant annotations of an image and remove redundant annotations. We evaluated the performance of our algorithm by means of images collected from Flickr, the photo sharing website. Our experimental results show that the Hierarchical_Twin Rings algorithm is a realistic and effective method for multi-label image annotation.
机译:随着摄影设备的爆炸性增长,个人数字图像的收藏数量和大小都在迅速增长。有效地索引和搜索这些图像以满足用户需求的需求日益增长。基于内容的图像检索(CBIR)系统有助于根据图像特征进行有效的图像索引和检索。但是,底层视觉特征与高层语义概念之间的语义鸿沟阻碍了其进一步发展。图像注释是旨在解决CBIR系统不足的解决方案。但是,注释存在两个问题。 (1)仅使用几个关键字来表示图像非常困难; (2)手动注释过程非常主观,模棱两可和不完整。本文着重于完善图像标注以聚类最具代表性的关键词,因为对图像的标注具有很小的语义差距。为了解决众所周知的语义鸿沟问题,我们提出了Hierarchical_Twin Rings算法来改进注释的质量。此外,我们提出了另一种基于质心的收敛方法,该方法将相关的多关键字自动分配给用户指定的图像,这可以大大提高检索精度和快速响应要求。我们的工作领域的主要贡献如下:(1)引入了挖掘代表性图像关键词的问题,作为对大量图像集进行图像索引和检索的注释。 (2)我们使用贝叶斯框架将图像和图像注释集成到一个统一的框架中。 (3)我们的公式允许人们完善图像的相关注释,并删除多余的注释。我们通过从照片共享网站Flickr收集的图像评估了算法的性能。实验结果表明,Hierarchical_Twin Rings算法是一种有效的多标签图像标注方法。

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