Semantic Image Annotation using Ontology And SPARQL

2020 VOLUME-8 ISSUE-10, AUGUST 2019, REGULAR ISSUE  
Based on user's interest or requirements, the search and retrieve images from large scale the databases, the contentbased image retrieval (CBIR) technique has become the primary emerging area in research for digital image processing which makes the visual contents to use. Most promising tools for image searching are Google Images and Yahoo Image search. They are used for annotations based on textual of the images. In this, the images are annotated manually with the help of keywords and then the
more » ... retrieval is carried by using various search methods based on text. Due to this method, the system performance is too low. Therefore, CBIR goal is to construct Image Ontology. The Ontology extracts the relevant images from the database by using low-level features like texture, shape and color. In multimedia technology, the challenging task is to retrieve the relevant images from an image database. For representation, organization and retrieving of images, the searching approaches based on semantic provide effective and efficient results by using image ontology. In this paper, protege software shows us how to create ontology and SPARQL query language provides semantic annotation for images. In addition to this, OntoViz and OntoGraph were used to generate Ontology in a graphical form for the relevant application
doi:10.35940/ijitee.h7062.019320 fatcat:m553iruosng7fianwhavnj57pi