An Analytic Report on Ontology Based Search Engine
Journal Title: International Journal of Computer Science & Engineering Technology - Year 2014, Vol 5, Issue 10
Abstract
Ontology based search engine is a tool that helps you in retrieving required information from the web by only considering the logical denotation of the submitted query. The semantic based search engines are the annotated form of the ontology based search engines. The paper identifies various methods involved in determination and identification of various ontology based search engines. The search engines types discussed in the paper is broadly classified into keyword based search engine and semantic based search engine. Majorly the efficiency of both the kind of search engines is taken into consideration here. In paper [1] the fuzzy ontology modelling is the main feature. This method is done to find the exact meaning and the relationship between the queries submitted by the user. The fuzzy logic that has been implemented will provide the accurate meaning between them in collaborative sequence. In paper [2] there has been a comparison made between keyword and semantic based search engines. In paper [3] for identifying the relationship, the concept is split into two. They are content concept and location concept. Here for the location concept, the external GPS method is used. In paper [4] multi crawler concepts are used. In this paper, a survey is presented about ontology based search engines and the need for the user’s migration to it.
Authors and Affiliations
Mano Chitra. M , R. Aravindhan
A Review of Image Contrast Enhancement Techniques
Images are an important part of today’s life. Images are captured through many devices such as cameras, mobile phones, scanners etc. The quality of images is degraded due to many reasons. The reasons may include adverse...
Effect of Morphological Filters on Medical Image Segmentation using Improved Watershed Segmentation
In this paper, denoising and segmentation of medical image is performed using morphological filters and watershed algorithm. Watershed Algorithm provides the complete division of image. It has low computational complexit...
Cosine Similarity Function For The Temporal Dynamic Web Data
Cosine similarity function is one of the most popular similarity function for handling the web data in various applications such as recommender system, collaborative filtering algorithms, classification algorithms, etc....
A Study on Application of Artificial Neural Network and Genetic Algorithm in Pattern Recognition
Image processing is an emerging field and lots of research had been performed for the past few years. Image processing has various techniques which are image segmentation, enhancement, feature extraction, classification,...
Web Image Search Reranking Using CBIR
The existing image retrieval process is based on text-based approach where the input to the search engine is given as the text. Typically, in the development of an image requisition system, semantic image retrieval relie...