Abstract

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.

Highlights

  • The present World Wide Web (WWW) stores the huge amount of data and the capacity of data is increasing in an exponential fashion

  • The ontology is represented in Web Ontology Language (OWL) format which is based on Resource Description Framework (RDF) and Resource Description Framework Schema (RDFS)

  • 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

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Summary

Introduction

The present World Wide Web (WWW) stores the huge amount of data and the capacity of data is increasing in an exponential fashion. Searching the useful information from the huge data is a tedious task in the current Web which is mostly depends on keyword based search. The vector space model is used to retrieve the data stored in the Web. The performance of the system depends on matching the keyword within the available data. The performance of the system depends on matching the keyword within the available data Such a model does not consider the semantic information presented in the textual Web pages. Current search engines use an inverted index method for indexing a particular Web page. The textual information about a particular Web page is extracted by crawler.

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