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COMPARING THE PERFORMANCE OF SEMANTIC IMAGE RETRIEVAL USING SPARQL QUERY, DECISION TREE ALGORITHM AND LIRE

机译:使用SPARQL查询,决策树算法和LIRE比较语义图像检索的性能

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摘要

The ontology based framework is developed for representing image domain. The textual features of images are extracted and annotated as the part of the ontology. The ontology is represented in Web Ontology Language (OWL) format which is based on Resource Description Framework (RDF) and Resource Description Framework Schema (RDFS). Internally, the RDF statements represent an RDF graph which provides the way to represent the image data in a semantic manner. Various tools and languages are used to retrieve the semantically relevant textual data from ontology model. The SPARQL query language is more popular methods to retrieve the textual data stored in the ontology. The text or keyword based search is not adequate for retrieving images. The end users are not able to convey the visual features of an image in SPARQL query form. Moreover, the SPARQL query provides more accurate results by traversing through RDF graph. The relevant images cannot be retrieved by one to one mapping. So the relevancy can be provided by some kind of onto mapping. The relevancy is achieved by applying a decision tree algorithm. This study proposes methods to retrieve the images from ontology and compare the image retrieval performance by using SPARQL query language, decision tree algorithm and Lire which is an open source image search engine. The SPARQL query language is used to retrieving the semantically relevant images using keyword based annotation and the decision tree algorithms are used in retrieving the relevant images using visual features of an image. Lastly, the image retrieval efficiency is compared and graph is plotted to indicate the efficiency of the system.
机译:开发了基于本体的框架来表示图像域。图像的文本特征被提取并注释为本体的一部分。本体以基于资源描述框架(RDF)和资源描述框架架构(RDFS)的Web本体语言(OWL)格式表示。在内部,RDF语句表示一个RDF图,该图提供了以语义方式表示图像数据的方式。使用各种工具和语言从本体模型中检索语义相关的文本数据。 SPARQL查询语言是检索存储在本体中的文本数据的更流行的方法。基于文本或关键字的搜索不足以检索图像。最终用户无法以SPARQL查询形式传达图像的视觉特征。此外,SPARQL查询通过遍历RDF图提供了更准确的结果。无法通过一对一映射检索相关图像。因此,可以通过某种形式的映射来提供相关性。相关性是通过应用决策树算法来实现的。本文提出了利用本体检索图像,使用SPARQL查询语言,决策树算法和开源图像搜索引擎Lire进行图像检索性能比较的方法。 SPARQL查询语言用于使用基于关键字的注释检索语义上相关的图像,而决策树算法用于使用图像的视觉特征来检索相关的图像。最后,比较图像检索效率并绘制图形以指示系统的效率。

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