A combined hierarchical model for automatic image annotation and retrieval

T. Sumathi, M. Hemalatha
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引用次数: 6

Abstract

Automatic image annotation is the process by which a computer system automatically assigns metadata in the form of captioning or keywords to a digital image. This application of computer vision technique is used in image retrieval system to organize and locate images of interest from a database. Many techniques have been proposed for image annotation in the last decade that gives reasonable performance on standard datasets. In this work, we introduce an innovative hybrid model for image annotation that treats annotation as a retrieval problem. The proposed technique utilizes low level image features and a simple combination of basic distances using JEC to find the nearest neighbors of a given image; the keywords are then assigned using SVM approach which aims to explore the combination of three different methods. First, the initial annotation of the data using two known methods, and that takes the hierarchy into consideration by classifying consecutively its instances; finally, we make use of pair wise majority voting between methods by simply summing strings in order to produce a final annotation. The proposed technique results show that this method outperforms the current state of art methods on the standard datasets.
一种用于图像自动标注和检索的组合层次模型
自动图像注释是计算机系统自动将元数据以标题或关键字的形式分配给数字图像的过程。将计算机视觉技术应用于图像检索系统,从数据库中对感兴趣的图像进行组织和定位。在过去的十年中,已经提出了许多用于图像标注的技术,这些技术在标准数据集上提供了合理的性能。在这项工作中,我们引入了一种创新的混合图像标注模型,该模型将标注视为检索问题。该技术利用低水平的图像特征和使用JEC的基本距离的简单组合来找到给定图像的最近邻居;然后使用SVM方法分配关键字,该方法旨在探索三种不同方法的组合。首先,使用两种已知的方法对数据进行初始注释,并通过连续分类其实例来考虑层次结构;最后,我们通过简单地对字符串求和来生成最终注释,从而在方法之间使用对多数投票。结果表明,该方法在标准数据集上的性能优于目前最先进的方法。
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