Paper Title
User Query Analysis Using Annotation Mining
Abstract
Abstract—To provide a higher precision of image retrieval from image search engines. We provide a novel method to
construct an Aggregate Markov Chain through which the relevance between the keywords is defined and the queries are also
used to automatically annotate the images. Assuming such a system, the user’s queries are used to construct an Aggregate
Markov Chain (AMC) through which the relevance between the keywords seen by the system is defined. The user’s queries
arealso used to automatically annotate the images. The queries formed by the users of a search engine are semantically
refined, the keywords representing concise semantics when compared to text in documents or other vocabulary related
presentations. We introduce the Monrovian Semantic Indexing (MSI), a new based image retrieval. The properties of MSI
make it particularly suitable for ABIR tasks when the per image annotation data is limited. Here we use LDA (Linear
Discriminant Analysis) method to filter redundant images and store it in a separate database thereby reducing the database
sizefor efficient retrieval of images. We also provide image editing options like enhancing or reducing the image size also
provided. The annotation mining and image ranking along with manual mapping of images are stored in the database
repository. Here we use Support Vector machine algorithm for image ranking process and Annotation mining to map the
image withtheir relevant names is proposed.