Semantic ontology for annotated images

In multimedia search the retrieval of an image from a huge data-set are surrounded with extensive widespread concerns. Without procedures, the content of multimedia for semantic-interpretation is not clearly or really available for use. Manual Annotation is the only simple technique that helps to overcome semantic- interpretation. However, manual Annotation is not only time wasting and costly but also encompassed with the absence of concept diversity and semantic gap. This paper extends a semantic ontology method to extract label terms of the annotated image. LabelMe is the annotated data-set of the so far annotated terms. It enhances terms with the support of Knowledge bases of WordNet and ConceptNet, particularly. It supplements the identical synonyms as well as semantically related terms. It further reduces the semantic interpretation as well as increases the Semantic ontology for that annotated term domain. The results of an experiment performed shows that, the synonym terms were 15% and conceptually terms were 79% added along the primary list. It represents concept diversity an enhancement of 119.13% unique terms in the original list.

[1]  Christiane Fellbaum,et al.  Book Reviews: WordNet: An Electronic Lexical Database , 1999, CL.

[2]  Chantal Reynaud,et al.  Pattern-Based Mapping Refinement , 2010, EKAW.

[3]  J. Euzenat,et al.  Ontology Matching , 2007, Springer Berlin Heidelberg.

[4]  Peter N. Robinson,et al.  Human genotype–phenotype databases: aims, challenges and opportunities , 2015, Nature Reviews Genetics.

[5]  Christopher S. Butler An ontological approach to the representational lexicon in Functional Discourse Grammar , 2012 .

[6]  Mansur R. Kabuka,et al.  ASMOV : Ontology Alignment with Semantic Validation , 2007 .

[7]  Ahmed Hadj Kacem,et al.  How to Organize the Annotation Systems in Human-Computer Environment: Study, Classification and Observations , 2015, INTERACT.

[8]  Chantal Reynaud,et al.  TaxoMap alignment and refinement modules: results for OAEI 2010 , 2010, OM.

[9]  Hwan-Seung Yong,et al.  Ontology Matching Based on hypernym, hyponym, holonym, and meronym Sets in WordNet , 2010 .

[10]  Jérôme David,et al.  Association Rule Ontology Matching Approach , 2007, Int. J. Semantic Web Inf. Syst..

[11]  Philipp Cimiano,et al.  Knowledge Engineering and Management by the Masses , 2010, Lecture Notes in Computer Science.

[12]  Erhard Rahm,et al.  Enriching ontology mappings with semantic relations , 2014, Data Knowl. Eng..

[13]  Komal V. Aher,et al.  A Survey on Feature based Image Retrieval , 2014 .

[14]  Fausto Giunchiglia,et al.  S-Match: An open source framework for matching lightweight ontologies , 2012, Semantic Web.

[15]  Zohra Bellahsene,et al.  On Evaluating Schema Matching and Mapping , 2011, Schema Matching and Mapping.

[16]  Suet-Peng Yong,et al.  An Evaluation of Convolutional Neural Nets for Medical Image Anatomy Classification , 2016 .