Print ISSN: 1681-6900

Online ISSN: 2412-0758

Keywords : Image classification


Image Classification Based on Hybrid Compression System

Nidaa F. Hassan; Noor Emad A. lhamza

Engineering and Technology Journal, 2015, Volume 33, Issue 3, Pages 488-511

Due to the fast development of internet technologies and multimedia archives are growing rapidly, especially digital image libraries which represent increasingly an important volume of information, it is judicious to develop powerful browsing computer systems to handle, index, classify and recognize images in database. In this paper anew algorithm image classification is proposed. Thispaper presents an efficient content-based image indexing technique for searching similar images using daubechies wavelet with discrete cosine transform. The aim of this work was to realize the image classification using hybrid compression system. The image was classified using 10 classes.

Early Detection of Disease-Viral Hepatitis Type-C Using Elman Artificial Neural Network

Ghaidaa Kaain Salih

Engineering and Technology Journal, 2012, Volume 30, Issue 12, Pages 2150-2164

The problem of founding important information in complex medical images which are needed in diagnosing of diseases with the complex data considered as one of the predication problem these days, so it is necessary to find aided means for diagnosing process. Artificial neural network (ANN) is one of them. This paper deals with the designing and implementation a classification ANN module for Lever Hepatitis(class-C)
or type-C which doesn’t have any vaccine these days. The different in diagnosing between hepatitis and other liver diseases is often difficult on purely clinical grounds in addition the damage to the liver causes changes in the pattern of the serum enzymes and
in recent years this has led to develop disease testing and its vaccine. Elman neural networks (NN) have been applied for automated detection of various medical diseases. Like its application on blood sample tests extracted from on line microscope (like it used
in this research).That feature selection is an important issue by removing features that do not encode important data information from the images used.This helps physicians to extract features which aided them in diagnosing process. Kernal principle component analysis (PCA) is used to represent blood images as eigen-features of training images in addition to extract mathematical module for classification of it. Finally a neural network (NN) is trained to perform the typical images and classify them (diagnosing process). The produced NN system produces used a matlab package in order to design and diagnose the proposed module. The object of this system used in our work is to diagnosing lever Hepatitis type-C in samples of blood images wherever difficulties in practical experiments by finding an optimal feature from specialists whom work in laboratories.