Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Interactive Image Retrieval using Genetic Algorithm and Orthogonal Moments


Affiliations
1 Sathyabama University, India
2 DMI College of Engineering, India
     

   Subscribe/Renew Journal


Image Retrieval is a field of study concerned with searching and retrieving images from a collection of database. The user participation in image retrieval system gains attention in the recent research in order to reduce the impact of completely depending on discrimination power of image features. In this proposed work, interactive genetic algorithm is employed where user selects one of the retrieved images for the next stage of mutation. Moreover, dual Hahn moments employed in this work, which are orthogonal and rotation invariants are effective image descriptors. Experiments were carried out on COREL images and the average retrieval rate of 88% reveals the efficacy of the proposed work.

Keywords

Moment Features, Image Retrieval, Genetic Algorithm.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 224

PDF Views: 3




  • Interactive Image Retrieval using Genetic Algorithm and Orthogonal Moments

Abstract Views: 224  |  PDF Views: 3

Authors

J. P. Ananth
Sathyabama University, India
V. Subbiah Bharathi
DMI College of Engineering, India

Abstract


Image Retrieval is a field of study concerned with searching and retrieving images from a collection of database. The user participation in image retrieval system gains attention in the recent research in order to reduce the impact of completely depending on discrimination power of image features. In this proposed work, interactive genetic algorithm is employed where user selects one of the retrieved images for the next stage of mutation. Moreover, dual Hahn moments employed in this work, which are orthogonal and rotation invariants are effective image descriptors. Experiments were carried out on COREL images and the average retrieval rate of 88% reveals the efficacy of the proposed work.

Keywords


Moment Features, Image Retrieval, Genetic Algorithm.