Analysis and Comparison of Color Features for Content Based Image Retrieval
Journal: INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY (Vol.4, No. 2)Publication Date: 2013-01-01
Authors : Milind Lande; PraveenBhanodiya; Pritesh Jain;
Page : 522-527
Keywords : CBIR; Color Histograms; DCD; Statistical model;
Abstract
Creation of a content-based image retrieval system implies solving a number of difficult problems, including analysis of low-level image features and construction of feature vectors, multidimensional indexing, design of user interface, and data visualization. Color is one of the important features used in CBIR systems. The methods of characterizing color fall into two major categories:? Histograms and Statistical. An experimental comparison of a number of different color features for content-based image retrieval presented in these paper. The primary goal is to determine which color feature is most efficient in representing the spatial distribution of images. In this paper, we analyze and evaluate both Statistical and Structural color features. For the experiments, publicly available image databases are used. Analysis and comparison of individual color features are presented
Other Latest Articles
- Optimal Tasks Assignment for Multiple Heterogeneous Processors with Dynamic Re-assignment
- Using 3GPP- A Secure IDS for MANETs
- RE-MAC: A Reliable Energy Efficient MAC Protocol For Wireless Sensor Networks
- A Simulated Novel Approach for Identifying Black Hole Attack in AODV based MANET
- Enhancing the performance of web Focused CRAWLer Using Ontology
Last modified: 2016-06-30 13:43:54