Detection and Classification of Lung Tissue Using block based Intensity Features
Journal: Journal of Advanced Engineering Research (Vol.1, No. 1)Publication Date: 2014-07-15
Authors : S. Sumaiya Banu; S. Syed Farmhand; P. Prabaharan; L. Malathi;
Page : 97-101
Keywords : ;
Abstract
Content based image classification address the problem of retrieving images relevant to the user needs from image databases on the basis of low-level visual features that can be derived from the images. Grouping images into meaningful categories to reveal useful information is a challenging and important problem. Clustering is a data mining technique to group a set of unsupervised data based on the conceptual clustering principal: maximizing the intra class similarity and minimizing the interclass similarity. Proposed framework focuses on color as feature. Color Moment and Block Truncation Coding (BTC) are used to extract features for image dataset. Experimental study using K-Means clustering algorithm is conducted to group the image dataset into various clusters
Other Latest Articles
- Performance Analysis of Two Phase Thermosyphon Solar Water Heater
- High Power Factor Induction Heating System with Interleaved Variable Duty Cycle
- Power Quality Enhancement of Grid Connected Wind Energy System Using Static Synchronous Compensator
- Computation of Exhaust Gas Constituents of Diesel Engine
- Content Based Image Retrieval Method using Fuzzy Heuristics
Last modified: 2014-12-14 01:52:43