A Combined Method Of Fractal And GLCM Features For MRI And CT Scan Images Classification

09/16/2014
by   Redouan Korchiyne, et al.
0

Fractal analysis has been shown to be useful in image processing for characterizing shape and gray-scale complexity. The fractal feature is a compact descriptor used to give a numerical measure of the degree of irregularity of the medical images. This descriptor property does not give ownership of the local image structure. In this paper, we present a combination of this parameter based on Box Counting with GLCM Features. This powerful combination has proved good results especially in classification of medical texture from MRI and CT Scan images of trabecular bone. This method has the potential to improve clinical diagnostics tests for osteoporosis pathologies.

READ FULL TEXT
research
10/14/2022

Reference Based Color Transfer for Medical Volume Rendering

The benefits of medical imaging are enormous. Medical images provide con...
research
11/19/2017

The process of 3D-printed skull models for the anatomy education

Objective The 3D printed medical models can come from virtual digital re...
research
01/09/2023

MOC-AE: An Anatomically-Pathological-Based model for Clinical Decision Support System of tumoural brain images

The present work proposes a Multi-Output Classification Autoencoder (MOC...
research
02/11/2010

Medical Image Compression using Wavelet Decomposition for Prediction Method

In this paper offers a simple and lossless compression method for compre...
research
05/03/2010

Detecting the Most Unusual Part of Two and Three-dimensional Digital Images

The purpose of this paper is to introduce an algorithm that can detect t...
research
07/19/2017

Real-Time Impulse Noise Removal from MR Images for Radiosurgery Applications

In the recent years image processing techniques are used as a tool to im...
research
06/18/2008

Neural networks in 3D medical scan visualization

For medical volume visualization, one of the most important tasks is to ...

Please sign up or login with your details

Forgot password? Click here to reset