Paper Title

Retrieval and Classification of Images Using Hybrid of HMMD Color Space and Naïve Bayes Classifier

Authors

  • Bahadur Singh
  • Er. Jaspreet Kaur Dhillon

Keywords

CBIR, HMMD, RGB, Color mean

Abstract

With the development of the Internet, and the availability of image capturing devices such as digital cameras, image scanners, the size of digital image collection is increasing rapidly. Efficient image searching, browsing and retrieval tools are required by users from various domains, including remote sensing, fashion, crime prevention, publishing, medicine, architecture, etc. For this purpose, many general purpose image retrieval systems have been developed. In CBIR, images are indexed by their visual content. Content based image retrieval consists of three parts: feature extraction, indexing and retrieval part. The techniques which are used to extract features of an image are called feature extraction techniques. The choice of features plays an important role in image retrieval. Some of the features used are color, texture and shape. Combination of these features provides better performance than single feature. Here we are extracting color mean features and color standard deviation featurewith the proposed method consists of HMMD (Hue Min Max Difference) color plane. It is proved in research work that HMMD along with color mean features and color standard deviation feature is tend to reduced the size of feature vectors, storage space and gives high performance than, RGB-color mean feature. Further, HMMD color space model will be used to improve the feature extraction and improve the precision. At the end, results are presented to show the efficacy of the proposed method.

Article Type

Published

How To Cite

Bahadur Singh, Er. Jaspreet Kaur Dhillon. "Retrieval and Classification of Images Using Hybrid of HMMD Color Space and Naïve Bayes Classifier".INTERNATIONAL JOURNAL OF ENGINEERING DEVELOPMENT AND RESEARCH ISSN:2321-9939, Vol.5, Issue 2, pp.1723-1729, URL :https://rjwave.org/ijedr/papers/IJEDR1702271.pdf

Issue

Volume 5 Issue 2 

Pages. 1723-1729

Article Preview